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Article

Urban Densification and Outdoor Thermal Comfort: Scenario-Based Analysis in Zurich’s Altstetten–Albisrieden District

by
Yingying Jiang
1,* and
Sacha Menz
2
1
Future Cities Laboratory Global, ETH Zurich, 8093 Zürich, Switzerland
2
Architecture Department, ETH Zurich, 8093 Zürich, Switzerland
*
Author to whom correspondence should be addressed.
Land 2025, 14(8), 1516; https://doi.org/10.3390/land14081516
Submission received: 2 June 2025 / Revised: 19 July 2025 / Accepted: 20 July 2025 / Published: 23 July 2025

Abstract

The growing urban population has made densification a key focus of urban development. It is crucial to create an urban planning strategy that understands the environmental, social, and economic effects of densification at both the district and city levels. In Switzerland, densification is a legally binding aim to foster housing and jobs within urban boundaries. The challenge is to accommodate population growth while maintaining a high quality of life. Zurich exemplifies this situation, necessitating the accommodation of approximately 25% of the anticipated increase in both the resident population and associated workplaces, as of 2016. This study examined the effects of urban densification on urban forms and microclimates in the Altstetten–Albisrieden district. It developed five densification scenarios based on current urban initiatives and assessed their impacts. Results showed that the current Building and Zoning Plan provides sufficient capacity to accommodate growth. Strategies such as densifying parcels older than fifty years and adding floors to newer buildings were found to minimally impact existing urban forms. Using the SOLWEIG model in the Urban Multi-scale Environmental Predictor (UMEP), this study simulated mean radiant temperature (Tmrt) in the selected urban areas. The results demonstrated that densification reduced daytime average temperatures by 0.60 °C and diurnal averages by 0.23 °C, but increased average nighttime temperatures by 0.38 °C. This highlights the importance of addressing warm nights. The study concludes that well-planned densification can significantly contribute to urban liveability, emphasising the need for thoughtful building design to improve outdoor thermal comfort.

1. Introduction

On 3 March 2013, a considerable majority of the Swiss electorate voted in favour of restricting the allocation of building land, thereby concluding the ongoing struggle over limited building areas. Consequently, the preservation of agricultural land and the natural landscapes of Switzerland took precedence over urban sprawl; henceforth, inward development within established city boundaries became the preferred approach in urban planning over the subsequent decades [1]. This shift facilitates the implementation of densification strategies as a legally binding policy, particularly within major cities and agglomerations such as Zurich. Conversely, as a city that has consistently been ranked among the top ten most liveable cities in the world over the past five years, Zurich’s appeal in terms of high quality of life, ample job opportunities, and its beautiful natural environment results in a continual increase in population. A medium scenario of population growth conducted by the City of Zurich projected that by the end of 2040, the city will need to accommodate more than 515,000 residents, constituting approximately 25% of the population in 2016, which indicates a substantial increase in buildings and infrastructure necessary to accommodate and serve the additional populace. As urban areas become increasingly congested, it becomes challenging to maintain, if not enhance, the existing high quality of living conditions, which presents a significant concern for future urban planning and design focused on liveability and sustainability.
In an effort to support the structural development of the city while concurrently addressing the anticipated need for increased residential density that safeguards the quality of living, the City of Zurich revised the Building and Zoning Plan in November 2016, referred to as BZO2016, from its previous version known as BZO99 (Building and Zoning Plan developed in 1999), illustrated in Figure 1. This revision is particularly apparent in the Altstetten–Albisrieden district, where with the exception of the Two-Floor Residential Zone bII (W2 bII), all other residential zones have been elevated by one level, thereby allowing for an additional full floor. Moreover, the original zoning plan’s two industrial zones were subdivided into three distinct zones (i.e., IG I, IG II, and IG III), each characterised by differing utilisation ratios for land development intensity. Additionally, modifications were made to certain green spaces across various open-space categories; nevertheless, the primary objective of minimising construction within such areas when necessary remained intact.
Urban densification is broadly acknowledged as a strategic approach to foster sustainable urban development by mitigating urban sprawl, augmenting access to essential services, and optimising transportation efficiency [2]. Nonetheless, its impact on liveability continues to be a subject of debate, with recent research emphasising intricate trade-offs between dense urban configurations and human well-being.
On one hand, densification can promote liveability through walkable neighbourhoods, decreased reliance on automobiles, and the attainment of a critical mass necessary for high-quality public spaces [3]. Urban areas with high density facilitate vibrant, mixed-use environments that foster social interaction, ease of access to amenities, and low carbon emissions. Urban development agendas, such as Rotterdam Inner City, demonstrate how compact urban design can be integrated with green infrastructure development, thereby emphasising the synergies between increased density and enhanced liveability [4].
Conversely, urban densification has been identified as one of the primary contributors to the urban heat island (UHI) effect, influencing the microclimate and thermal comfort within urban areas [5,6]. The reduction in natural land surfaces, including green spaces, resulting from the expansion of building footprints, and the prevalence of impermeable surfaces is correlated with an increase in land surface temperatures and a decline in thermal comfort [7,8]. The escalation of land-surface roughness due to greater building densities impedes wind flow, reduces overall wind speeds at the pedestrian level, and contributes to the entrapment of heat radiation [9,10,11]. Additionally, anthropogenic emissions from transportation, building mechanical systems, and human metabolic heat exacerbate the accumulation of heat in urban areas [12,13,14,15,16].
In Zurich, the phenomenon of the urban heat island effect has been documented since 1984, when Heinz Wanner and Jacques-André Hertig reported a heat island intensity of 5–7 °C concerning air temperature in the city [17]. The notable disparities when compared to rural regions illustrate the substantial impacts of urban development on the microclimate. This urban–rural differential observed over the past decade differentiates Zurich from other Swiss cities, despite exhibiting a comparable diel variation to other locales [18]. Since the year 2000, there has been a significant increase in the frequency of years with more than 15 tropical nights (defined as minimum temperatures exceeding 20 °C) recorded in Zurich’s urban areas [19]. Furthermore, forecasts based on Swiss national climate scenarios CH2011 [20] and CH2018 [21] confirm a trend towards a warmer future, with an anticipated increase in annual mean temperatures ranging from approximately 0.6 to 1.9 °C. In accordance with population growth trends, it is anticipated that an increasing number of individuals will be subjected to more frequent and intensified extreme heat events, resulting in heightened levels of heat stress [22]. This underscores the necessity of considering urban microclimate and thermal comfort in the planning of urban densification and redevelopment initiatives, as well as in the pursuit of effective strategies to mitigate potential urban heat [23].
To balance urban densification and liveability, recent studies highlight climate-sensitive urban design strategies such as altering urban layouts, planting vegetation, expanding tree canopies, using reflective surfaces, and adding water bodies [24]. Increasing diverse patches of urban greenery and mixing forest, grasslands, and shrublands can lower near-surface temperatures—about two metres above ground—by 0.4–3.7 °C at different scales, reducing thermal discomfort [25]. This cooling effect is particularly prominent in open green spaces like parks and gardens, although its influence on surrounding built-up areas remains debated [26] due to complex interactions between cooler air advection [27] and dry air flows from heated interiors [25]. Reflective pavements in an Athens park decreased peak summer temperatures by up to 1.9 K and enhanced comfort conditions [28]. Nevertheless, the cooling advantages of reflective surfaces are highly dependent on urban canyon geometry [29], and considerations for pedestrian visual comfort, especially glare, are important when selecting pavement materials [30].
Recent studies addressing the UHI effect and urban microclimate have illuminated the intricate relationships among urban forms, local climate, and thermal comfort. Factors pertaining to urban development, including impervious surfaces, building footprint ground coverage, building heights, the floor area ratio of buildings, and the street canyon ratio—which compares street width to the height of neighbouring structures—have been demonstrated to exert significant influence on urban temperature [5,31,32,33]. However, these factors manifest distinct behaviours, resulting in diverse and multifaceted outcomes [5,6,32,33,34]. A greater fraction of building surface area on the ground, coupled with an increased horizontal compactness achieved through the reduction in street canyon widths, can contribute to a pronounced warming effect [32,35]. While tall buildings can create shade over adjacent surfaces and structures, thereby reducing direct solar radiation, an increase in building height can lower temperatures and assist in mitigating the UHI effect [5,6,31,35]. However, this benefit may diminish when the overall building height exceeds 40 m and could potentially transition to a negative impact when surpassing 60 m [32]. Furthermore, variations in the effect may occur between daytime and nighttime periods [34]. The building floor area ratio (FAR), as a parameter regulating building density, in conjunction with the building coverage ratio and the height of buildings, influences outdoor thermal comfort. The research by Widiyannita et al. indicated that, under a constant building coverage ratio, a larger FAR is associated with heightened air temperature and mean radiant temperature, similar to scenarios where the building coverage ratio fluctuates with a fixed FAR [36]. Wang et al. identified a pivotal inflexion point at 1.5 within the correlation between FAR and the increase in land surface temperature, wherein the positive correlation becomes negative as the floor area ratio exceeds 1.5 [32]. Additionally, the size and configuration of a city also influence UHI intensity. Zhou et al. emphasised the preeminent effect of city size among various urban factors after analysing over 5000 European urban agglomerations, with fractality and anisometry exerting comparatively weaker impacts [33]. Despite the intricate and complex interrelations among building geometries and urban factors, their findings suggest the feasibility of employing a judicious combination of these elements to minimise the UHI effect and alleviate heat stress amidst processes of urbanisation and densification.
Indeed, significant efforts have been made over the past decade. Figure 2 below illustrates the changes in the cumulative building floor areas and green spaces at five-year intervals since the last century in the districts of Altstetten and Albisrieden, Zurich. The variation ratio, which is defined as the quotient between the increase in building floor areas and the decrease in green spaces, signifies the average efficiency of augmenting floor areas at the expense of diminishing green spaces. The abrupt increase in total building floor areas, along with the variation ratio from 2.6 to 3.8 since 2011, suggests the emergence of new building typologies and geometries that exhibit a significantly higher efficiency compared to conventional building types. These changes have been implemented in response to the spatial demands resulting from population growth, while simultaneously mitigating the loss of green spaces. Can these promising building typologies and geometries also enhance thermal comfort and microclimate conditions within the district?
As part of the research project “Dense and Green Cities” at the Future Cities Laboratory Global, which focuses on exploring strategies and approaches for urban densification and transformation in Zurich, this study intends to respond to the challenges posed by population growth, inward spatial intensification within the existing city boundaries, and the need for thermal comfort and microclimate management in urban environments. Specifically, it investigates how various urban densification approaches may influence existing urban forms and outdoor thermal comfort within Zurich’s urban climate. Through a scenario-based analysis of a real case, specifically the district of Altstetten–Albisrieden in Zurich, the study aims to investigate the potential impacts of densification from the perspectives of the urban form and microclimate, applying various redevelopment measures and advantageous building geometries to accommodate the anticipated population increase aligned with projected city growth. This endeavour seeks to contribute strategic recommendations for climate-adapted urban densification and transformation.
In the subsequent sections, this paper delineates the methodological framework, specific methods, and approaches employed to generate densification scenarios, identify urban redevelopment opportunities, and select building geometries for scenario modelling. By utilising the Urban Multi-scale Environmental Predictor (UMEP) to simulate outdoor thermal comfort in the designated subsite area and the Physiological Equivalent Temperature (PET) at selected Points of Interest (POIs) within each densification scenario, the paper provides insights and recommendations regarding densification within the examined area. Finally, it concludes with an examination of the study’s limitations and suggestions for future development.

2. Methods

2.1. Methodologies and Framework

This study aims to investigate the impact of various urban densification methodologies on existing urban forms and their effect on outdoor thermal comfort within the urban climate of Zurich. The research is structured around two key components, as illustrated in Figure 3.
The investigation commenced with population growth projections provided by the City of Zurich. By integrating authentic demographic data alongside average residential and commercial space requirements, the study translated the anticipated population increase into the need for additional building floor areas within the designated area. This requirement established parameters for assessing the capacity of the BZO2016 as well as identifying potential challenges. In addition, the study incorporated existing densification strategies and development categories based on construction periods to create densification scenarios, highlighting various approaches and their impacts on the current urban fabric throughout the district. Subsequently, representative building geometries were identified, and detailed densification scenarios were developed into architectural models for the neighbourhood. These models were then simulated using the SOLWEIG model within the UMEP to assess the effects of densification on outdoor thermal comfort.
The first component examined urban densification impacts on the urban form within the selected district by addressing the following inquiries:
  • Question 1: To what extent must building floor areas be increased to accommodate the anticipated population growth in the selected district?
  • Question 2: In which locations should these building floor areas be expanded?
  • Question 3: What methods of densification can be employed to facilitate the enhancement of building floor areas?
Question 1 delineated the overarching requirements for building densification in response to population growth forecasts provided by the City of Zurich for the year 2040. The response to this inquiry established the parameters governing the increase in building floor area within the scope of the study. Question 2 identified suitable land parcels for densification by quantifying permissible building floor areas as outlined by BZO2016. Question 3 examined the primary methodologies of densification and sought to identify exemplary building geometries applicable to densification scenarios. Integrating this with the analysis from Question 2, the response to this inquiry was utilised to develop densification scenarios, thereby enabling the exploration of various approaches and potentialities across the entire district under study.
The second component concentrated on simulating the microclimate within the specified subsite case under the designated scenarios. The objective of this segment was to address the inquiry of Question 4: how would densification affect the microclimate when employing various densification methods and different exemplary building geometries? This analysis elucidated the implications of urban densification on the microclimate through diverse approaches.
By synthesising the responses to the aforementioned inquiries, this study ultimately concludes with an assessment of the potential for densification and the associated challenges within the district, in addition to recommendations for the design of building typologies that can enhance microclimate and outdoor thermal comfort amidst urban densification.

2.2. Study Area

The study selected the Altstetten–Albisrieden district of Zurich as the specific case for investigating strategies and approaches to urban densification and transformation, grounded on two principal factors.
As a highly developed city, Zurich presents a scarcity of extensive areas that can facilitate new development to accommodate population growth within the predefined urban boundaries. The primary challenge pertains to existing quartiers. The most recent city plan emphasises the development of the northern and western regions, particularly the Seebach, Oerlikon, and Schwamendingen quartiers to the north, as well as the Altstetten and Albisrieden quartiers to the west [37]. These districts are well-connected and supported by robust public transportation and infrastructure networks. Their comparatively low building density indicates considerable potential for the creation of new public spaces, the enhancement of public utilities and facilities, and the optimisation of energy consumption through the transformation of the urban fabric towards higher density.
Located to the west of Zurich, Altstetten–Albisrieden spans from the Limmat River in the north to the foothills of Uetliberg in the south, encompassing an area of 12.1 square kilometres (Figure 4). Its topography exhibits a diversity of landscapes and encapsulates a majority of the features typical of the entire city. As one of the earliest incorporated communities, Altstetten–Albisrieden retains various buildings and urban forms from different periods of urbanisation, offering opportunities to explore future densification under varied circumstances. According to the latest community survey conducted by the City of Zurich, the district accommodates approximately 58,517 inhabitants and provides a total of 59,149 employment opportunities [38,39].

2.3. Data

2.3.1. Geographic Data and Building Information

The study acquired zoning plans, geo-information of land parcels, as well as two- and three-dimensional building data from the open-access resources of the City of Zurich in the year 2021. This data concerning buildings and land parcels includes extensive information such as geometric outlines and heights of buildings, the year of initial development and subsequent redevelopment, functional categories, designated land use types, and the permitted intensity of development as stipulated by the zoning plans, in addition to the geometries of the land parcels. Subsequently, this information was updated and merged with additional information regarding the number of households and job positions linked to each structure, which was sourced from the City of Zurich in 2023. When combined with zoning plans and land parcel information, buildings that did not correspond with matched land parcels were excluded from the calculations and ensuing scenario analyses and simulations.

2.3.2. Meteorological Information

This study utilised meteorological information formatted in Energy Plus Weather (EPW) acquired from the Ladybug Tools website [40], which was retrieved from the Repository of Building Simulation Climate Data [41]. This dataset encompasses a year’s worth of hourly measurements, including air temperature, solar radiation, wind speed, humidity, atmospheric pressure, and precipitation. In order to model the urban climate of Altstetten, Zurich, the study selected the meteorological data from the Affoltern Zurich station, situated approximately 4.5 km north of Altstetten, employing the period from July 6th to July 12th to represent the extreme days characterised by the highest temperatures during the summer in Zurich.

2.4. Premises of Densification Calculation and Scenario Analysis

This study was conducted utilising two foundational premises to perform calculations related to densification and to translate population growth into the required building density.
The primary premise is to regard the average living area as 45 m2 per individual, while the average workplace area is established at 40 m2 per position in the assessment of densification scenarios. These parameters have been proposed by the City of Zurich [37]. The Federal Statistical Office has determined that the average residential floor space per inhabitant in Zurich stands at 45 m2 as of the conclusion of 2023 [42].
The second premise involves considering a duration of fifty years as a significant parameter for the categorisation of buildings. This assertion is based on two principal facts. The first fact indicates that the average lifespan of existing buildings in Altstetten and Albisrieden, excluding annexed buildings utilised for storage or other temporary uses, is approximately 46 years, according to a preliminary study of the buildings in the area. The second fact relates to the advisory on building renovations, which suggests that when buildings exceed fifty years of age, it is advisable to consider replacing them with new constructions. This recommendation is based on factors concerning the structural integrity of the buildings, their market potential, and the enhancement of land use [43,44]. Consequently, all buildings have been classified into three distinct categories:
  • Recent Buildings: Structures that were built or redeveloped after 1975;
  • Rebuildable Buildings: Structures that were constructed or redeveloped between the years 1925 and 1975;
  • Remarkable Buildings: Structures that have been preserved for over one hundred years, possess significant historical value, and have not undergone redevelopment since 1925.
In accordance with these three building categories, the land parcels were also classified into four groups regarding the development year of the majority of the buildings within the parcels: development after 1975, development between 1925 and 1975, development before 1925, and unbuildable parcels.

2.5. Approaches and Methods for Densification Influencing Urban Forms

2.5.1. Calculating the Demands of Population Growth

The projected resident population growth data for the year 2040, as provided by the City of Zurich, was directly employed as a benchmark to calculate the increase in residential floor area within the designated Altstetten–Albisrieden district (Table 1).
Given the paucity of existing scenarios for job position development within the City of Zurich, this study utilised the correlations between the number of job positions and the resident population of the entire district during the years 2015, 2020, 2022, and 2024 as references. These references were employed to statistically estimate the projected number of future job positions in accordance with the anticipated resident population by the year 2040 (see Table 1, Appendix A.2). This estimation was predicated on the hypothesis that the number of job positions must increase proportionally with the growth in the resident population. The data pertaining to both the number of job positions and the resident population were sourced from the published Quartierspiegel by the City of Zurich [38,39,45,46,47,48,49,50].
By integrating the specified average living space per resident with the average workplace area per employment position, this study translated population growth into an expansion of building floor areas, which were employed as parameters for examining densification scenarios.
Table 1. Projection of resident population and job positions in Altstetten–Albisrieden based on the information listed in the last four Quatierspiegel reports and population estimation by the City of Zurich [51].
Table 1. Projection of resident population and job positions in Altstetten–Albisrieden based on the information listed in the last four Quatierspiegel reports and population estimation by the City of Zurich [51].
Resident PopulationJob Positions Rate Job/Resident
Altstetten–Albisrieden 201450,68547,1170.93
Altstetten–Albisrieden 202056,61054,0010.954
Altstetten–Albisrieden 202258,51759,1491.011
Altstetten–Albisrieden 202459,84164,8401.084
Altstetten–Albisrieden 204068,100
(+16.4% refer to 2022)
77,112
(refer to Appendix A.2)
1.132

2.5.2. Calculating Permitted Building Floor Areas by BZO2016

Given that BZO2016 was developed as a legal response to anticipated future population growth, this study initiated an investigation into densification effects on the urban form by assessing the permissible floor areas of BZO2016 as a benchmark for exploring potential densification strategies.
Enhanced by its ability to combine spatial analysis and visualisation with statistical analysis through attribute tables, QGIS software (version 3.3.40.1.1, Bratislava) was employed to calculate the permissible floor areas by BZO2016 and to display the variation in development intensity alongside different densification strategies.
The study extracted relevant geo-information and data from the open-source resources of the City of Zurich, which included: (1) Zones of parcels, detailing the allowed utilisation ratio (UR), building height, number of floors, residential ratio, and the coverage of open green spaces at ground level; (2) land parcels, encompassing geometric dimensions and associated zones; and (3) existing buildings, comprising the building footprints, heights, number of floors, functional classifications, and years of construction or renovation. This information was combined using the ‘Joined by Location’ function in QGIS for the later calculation.
Given that the zoning plans employ UR as a parameter to regulate the intensity of land parcel development, this study utilised the utilisation floor area and UR throughout the analysis, rather than the building floor area ratio (FAR), which measures the total gross built areas of a structure. The utilisation floor area quantifies the habitable indoor spaces of a building, excluding auxiliary structures such as basements, storage areas, and garages. In this study, it was calculated by multiplying the building footprint by the number of habitable floors. The count of habitable floors was determined based on the height of each building as provided by the City of Zurich, corroborated through Google Earth and onsite observations. Consequently, a total of 2894 land parcels were included in this study.
Subsequently, the three development categories were incorporated into the calculations to apply densification. Due to the absence of precise information concerning the usage of buildings, this study statistically evaluated the comprehensive capacity of BZO2016 from three distinct perspectives, as represented in the flowchart in Figure 5. This evaluation involved analysing land parcels in accordance with their primary development periods and the varying development intensity associated with BZO2016. The first aspect assessed the overall permissible utilisation floor areas for each land parcel within the district, considering zoning classifications, geometric dimensions of the parcels, and the maximum allowable UR. This analysis clarified a scenario in which the entirety of the district, if developed according to the specifications of BZO2016, could theoretically support a predetermined quantity of habitable floor areas. Recognising that numerous structures and developments in the region predate existing city plans or regulations, the second aspect examined the extent to which habitable floor areas could be increased while preserving the integrity of extant buildings. This evaluation contrasted the current habitable floor areas with the allowable limits for each parcel and aggregated the discrepancies to determine the maximum UR outlined in BZO2016, thereby indicating the theoretical potential for densifying the buildings within the district. The third calculation evaluated the scenario in which only the developments between 1925 and 1975 were redeveloped to comply with the UR limits specified by BZO2016.
The results of this calculation comprised two parts. Firstly, it theoretically assessed the capacity of BZO2016 for densification, considering various parcel involvements. Secondly, the changes in involvement identified the specific modifications of each parcel under different strategies and served as the foundation for establishing densification scenarios.

2.5.3. Identifying Densification and Urban Redevelopment Means

Considering the advocacy for the principle “no net land take in cities and commuting zones in Europe,” as proposed by the Europe Committee [52] to safeguard agricultural production, ecosystems, and natural landscapes, densification has emerged as a viable solution in numerous regions. Two forms of densification have been identified across various scales and locations: soft densification and hard densification [53].
Soft densification refers to the process of intensifying or repurposing existing buildings to accommodate specific needs, such as transforming office buildings into residential apartments or subdividing single-family homes into multiple units [54]. This approach, which does not radically alter the prevailing urban forms while accommodating population growth from a bottom-up perspective, has a limited impact on microclimatic conditions [53,55]. In contrast, hard densification typically involves the expansion of built-up areas through new constructions, including the redevelopment of existing urban structures, land parcels, or previously developed brownfield sites. This may entail the introduction of new buildings within the urban fabric or the addition of further floors to existing structures [53,54,56]. The direct consequences of hard densification on the urban fabric significantly influence both spatial arrangements and environmental conditions.
This study concentrated on the interrelationship between building geometries and the enhancement of outdoor thermal comfort within the context of urban densification. Consequently, only hard densification was considered in the development of scenarios for subsequent simulation.
A preliminary survey of building redevelopment in the Altstetten–Albisrieden district over the past two decades has documented the processes of intensified densification primarily through three approaches: completed land redevelopment, building replacement, and the addition of floors to existing structures. Notable examples include the Sonnengarten Cooperative Residence, which underwent redevelopment from the original three-floor settlement into a cooperative development; the Luggwegstrasse Residence, where portions of the low-rise housing were transformed into a more compact cooperative living programme; and the Marktgasse within Freilager Albisrieden, where two three-floor warehouse blocks were preserved and expanded into a six-floor multi-use building, as shown in Figure 6.
In alignment with the three previously mentioned building categories, the respective means of densification can be articulated as follows:
  • Developments after 1975: Considering the addition of floors to the existing structure as the primary measure;
  • Developments between 1925 and 1975: Considering building replacement as the principal densification strategy;
  • Development before 1925: Preserving the building structure without alteration or densification.

2.5.4. Generating Densification Scenarios over Altstetten–Albisrieden

Based on the findings concerning permissible building floor areas as per BZO2016 and their discrepancies with current conditions in each parcel, alongside densification strategies and development categories, this study devised densification scenarios for the analysed district. Parameters such as the total floor area, number of floors, average UR, building footprint, and ground-level open green space were computed utilising the attribute table of the joined shapefile within QGIS, which encompassed fields related to zoning classifications, existing buildings, and modifications outlined in prior sections. These parameters facilitated the illustration of spatial variations in the urban form across the scenarios and supported the examination of challenges associated with increasing land parcel utilisation. The discrepancies in UR for each parcel between the current state and the scenarios were visualised within QGIS.
Given that this study concentrated on an analysis of densification and its implications at both the neighbourhood and district levels, as well as the substantial number of parcels involved, it did not provide detailed design specifications for all parcels in terms of the surface fractions relating to building footprints, green spaces, or paved surfaces at ground level. As a result, the green spaces were estimated based on the minimum green surface coverage requirements outlined in BZO2016, which is mandated for all developments.

2.6. Evaluating Densification Impacts on Microclimate in the Urban Environment

2.6.1. Subsite Area for Densification Modelling and Simulation

This study selected the central area of the district as a subsite case in order to evaluate the influence of densification on outdoor thermal comfort within the context of urban climate. The subsite, as depicted in Figure 7, is bordered by the main streets of the district and encompasses an area of 21 hectares. It includes 176 land parcels and over 250,000 m2 of built floor area, the majority of which is designated for residential use (Table 2). Due to its advantageous connections to both the local railway station and the cultural centre of Altstetten, this site hosts several shopping centres along the streets. The table below outlines the current development status and composition of the site. The BZO2016 permits the construction of five-story and six-story residential and commercial buildings on the site.

2.6.2. Determining Exemplary Building Geometries for Densification Scenarios

To conduct simulations concerning the urban microclimate, it was necessary to specify the densification scenarios derived from the preceding sections with detailed building information, which entailed selecting exemplary building geometries capable of representing the anticipated development trend in Zurich.
Recognising the trend of high-efficiency building geometries since 2011, as demonstrated in Figure 2, and acknowledging the critical significance of providing substantial green spaces to enhance living quality, this study incorporates the Urban Ratio (UR), which reflects the development intensity of land parcels, along with green surface coverage (GsPR), representing the extent of green spaces within these parcels, to identify exemplary building geometries among existing developments within the district.
Three key premises were examined: (1) In light of the objective to increase building floor areas to accommodate a greater number of residents and job positions in the district, future developments must be constructed at a density exceeding the current average; (2) to achieve a balance with the increasing building density, it is essential to allocate more green spaces than the current average in the new developments; and (3) in alignment with the understanding of the urban development trend towards more efficient spatial planning over the last few decades, the building geometries should emerge in the recent developments from the last ten to fifteen years.
Consequently, the mean values of the UR per parcel (UR = 0.99) and GsPR per parcel (GsPR = 0.58) were utilised as thresholds, as depicted in Figure 8. Approximately 200 developments were filtered, culminating in the selection of three exemplary building geometries within the existing developments. These selected projects serve functions such as multi-family residences and cooperative residences, incorporating two primary building geometries: tower blocks and courtyard blocks, which were employed as the main types in the subsequent densification scenario modelling for microclimate analysis in QGIS.
To enhance the comparability among all scenarios, this study endeavoured to minimise the modification of building geometries within each scenario. Minor adjustments were made to specific buildings to comply with the particular conditions of land parcels and the regulations concerning building volumes and their relationships with surrounding settings, such as the setback distance from streets, the minimum distances between buildings, and the minimum green surfaces, as delineated by the BZO2016.

2.6.3. Urban Multi-Scale Environmental Predictor (UMEP)

This study employed a city-based climate service plug-in, the Urban Multi-scale Environmental Predictor (UMEP, version 4.1.1), within QGIS to analyse the outdoor thermal comfort associated with densification scenarios. UMEP has been developed as a community-driven, open-source, and integrated tool for urban climatology and climate-sensitive planning applications, applicable at micro, local, and city scales [57].
The primary focus of the study was the utilisation of the Solar and Longwave Environmental Irradiance Geometry model (SOLWEIG, version 2022a) to estimate the spatial variations impacting 3D radiation fluxes and the mean radiant temperature across diverse urban configurations in the densification scenarios. The simulation incorporated three categories of data: (1) Meteorological data, which included incoming long- and short-wave radiation, wind speed and direction, air temperature, humidity, and barometric pressure; (2) geo-information pertaining to buildings, which encompassed building geometries and heights; and (3) digital elevation models (DEM) representing the ground level in raster format. These data were used to create pre-processed raster files, such as digital surface models (DSM), the sky view factor, wall height, and wall aspect of each scenario. The outcomes of SOLWEIG, following the post-analysis process, comprised two components. It delineates the variations in mean radiant temperature (Tmrt) during daytime, nighttime, and across the diel period within the subsite area of all scenarios.
The Tmrt simulations conducted through UMEP’s implementation of the SOLWEIG model have a strong validation record in the literature. Lindberg et al. [58] reported R2 = 0.94 (p < 0.01 and RMSE = 4.8 K) in field validations at two urban courtyards. Subsequent studies extended the validation to include variations in vegetation and building morphology. A benchmark comparison by Gál and Kántor [59] found that SOLWEIG performs comparably to other established microclimate models, such as ENVI-Met and Rayman Pro. This study relied on this extensive validation to support the reliability of the Tmrt results, while acknowledging that the scenarios involved in the study were hypothetical and not validated against direct measurements.
To further elucidate the heat stress impacts on the site and its variations in accordance with different densification methods and changes in building geometries within the urban context, this study identified thirteen points of interest (POIs) for estimating the physiological equivalent temperature (PET) over a 24–h period. Among all POIs, six (OpenSpace 1–6) were located in the open spaces of specific land parcels, while the remaining seven (Street 1–7) were situated along the main streets of the area. All POIs were positioned within an area either surrounded by or in proximity to densified developments, which exhibited the most variability across densification scenarios (Figure 7).
To emphasise the influence of various densification strategies and building geometries on outdoor thermal comfort and urban climate, this study streamlined the model workflows by utilising the default environmental parameters provided by the software, including the emissivity and albedo of both the walls and ground. The research concentrated on the variations in building-related factors caused by density, such as building geometries, floor areas, and heights, while excluding urban vegetation, such as trees, green surfaces, and other urban features, in the scenario simulations of outdoor thermal comfort. This exclusion is grounded in three reasons:
  • First, the study lacked precise information regarding green surfaces and vegetation, particularly concerning trees and plants in private gardens.
  • Second, during the modelling of densification scenarios with selected exemplary building geometries, ground surfaces were consequently modified; as there are no universal standards for designing green spaces, the scenario modelling could not establish uniformity in the provision of green surfaces and greenery across all scenarios.

3. Results

3.1. Capacity of BZO2016

Table 3 provides a summary of the current population and job positions, in addition to the anticipated population growth and the corresponding requirement for expanded floor areas to accommodate this change. Table 4 presents the existing and permissible floor areas across three categories of parcels within the district. The results calculated from the three aspects outlined in Section 2.5.2, as depicted in Table 5, indicate that, when utilising the provided average living area (45 m2) and working area (40 m2), BZO2016 theoretically possesses the capability to sustain the anticipated population increase. Upon the full development of the district, in accordance with BZO2016, the permissible floor area surpassed the total expected floor area by over 100,000 m2. In order to achieve the maximum floor area without modifying existing structures, the permissible increase in floor area exceeded the necessary expansion by more than 600,000 m2. When translating the permissible floor areas into the number of residents and job positions within each land parcel, the permissible floor areas cited by BZO2016 are adequate for the projected population growth by the year 2040. Nevertheless, when considering the ages of the buildings, only redeveloping the developments between 1925 and 1975 to the maximum floor areas specified by BZO2016 will not meet the demand for increased building space, resulting in an approximate shortfall of 44%.
The results indicated, on average, that an approximate 27% increase in the designated UR for BZO2016 is necessary when redeveloping parcels that are over fifty years old. This extension of the UR reflects the latest building densification distribution outlined in the Municipal Master Plan for Settlements, Landscape, Public Buildings, and Facilities [37]. Furthermore, an additional solution involves the developments after 1975, which, according to BZO2016, have not been utilised intensively enough and still possess the capacity to increase by over 1,000,000 m2 of floor area. To satisfy the demands for densification, it is essential that those developments incorporate at least one additional floor onto the existing structures.

3.2. Densification Scenarios and Their Impacts on Urban Form

In accordance with the previously mentioned results, this study generated five densification scenarios to examine the impact of urban densification on existing urban forms. This analysis combined existing densification strategies, such as building replacement and the addition of floors to existing structures, as summarised in Table 6.
  • Scenario 1 (SN1): This scenario involved all parcels. All developments were replaced to achieve the maximum UR defined by BZO2016.
  • Scenario 2 (SN2): This scenario investigated the addition of one floor to all existing buildings to satisfy the demand for an increased population, excluding developments before 1925 and those within zones where densification is prohibited (Zone K).
  • Scenario 3 (SN3): This scenario modelled the maximisation of building density permitted by BZO 2016. It preserved the developments before 1925 while densifying parcels that have not yet reached the limits of BZO2016 within the remaining land parcels. Developments between 1925 and 1975 were replaced, while additional floors were added to developments after 1975.
  • Scenario 4 (SN4): This scenario evaluated the moderate densification of developments after 1925. Developments between 1925 and 1975 were replaced in accordance with the restrictions of BZO2016, and additional floors were added to developments after 1975.
  • Scenario 5 (SN5): This scenario focused on densification solely within developments between 1925 and 1975. Those developments were replaced with a 27% increase in the UR as defined by BZO2016. All other buildings remained unchanged in accordance with the current situation.
The comprehensive calculation results of each scenario, concerning overall floor areas, average URs, maximum building footprints, and minimum open and green surface areas in accordance with the building regulations outlined in BZO2016, are summarised in Table 7. Generally, excluding the changes to supporting facilities attributable to population growth and building densification, such as car parking areas and paved pathways, a complete redevelopment of the district (SN1) exhibited the most significant impact on urban form. This scenario had the potential to increase building footprints while simultaneously decreasing open and green surfaces on the ground; however, its average UR was strictly regulated by BZO2016, resulting in it being the lowest among all scenarios. Scenario SN2, which involves the addition of one additional floor to all developments after 1925, indicates the potential for maximising building floor areas without modifying ground footprint coverage, while achieving the highest increase in average UR among all scenarios. In instances where only developments after 1925 are considered for densification, scenario SN4 presents the capacity to offer greater building floor areas with reduced building footprints compared to scenarios SN3 and SN5, ultimately resulting in a comparatively lower average UR.
Figure 9 illustrates the variation in the UR of each parcel across all scenarios. The gradient colours, transitioning from blue to red, denote the development intensity of parcels in each scenario, which shifted from significantly reduced to markedly increased when compared to the current situation. Scenario SN1 emphasises the influence of the BZO2016 in containing and regulating development intensity throughout the district, where the majority of residential areas experienced densification, resulting in an average increase of 0.30 in the UR. Conversely, certain parcels located near infrastructure and within industrial zones were regulated to decrease existing building intensity, approximately 1.20 in the UR. Leveraging the advantage of not expanding the building footprint on the ground, scenario SN2 resulted in an average increase of 0.30 in the UR across the district. Due to the dimensions of the existing buildings, the increase in the UR exceeded 0.65 in some parcels adjacent to infrastructure and industrial regions. Involving parcels that either have not reached the limits defined by the BZO2016 or are older than fifty years in the densification process, scenarios SN3 and SN4 achieved average increases of 0.43 and 0.35 in the UR across all involved parcels, respectively. Scenario SN5 presented a contrasting situation to scenario SN2, focusing on the densification processes solely within parcels over fifty years old, which resulted in a 0.52 increase in the UR for the redeveloped parcels. When balancing the changes in building footprints on the ground, the increase in building floor areas, and the average UR across the district, scenario SN4 distinguished itself among all scenarios due to its second-highest increment in total floor areas, yet with a comparatively lower overall UR.
This study subsequently employed the two exemplary building geometries defined in Section 2.6.2, specifically the tower block and the courtyard block, to delineate the densification scenarios and create building models for evaluating the impacts on outdoor thermal comfort in the selected subsite area. Consequently, the five densification scenarios were expanded to ten with varied building geometries; the results pertaining to urban factors are presented in Table 8.
Due to the composition of the three development categories in the area, the primary urban factors delineate a slightly different situation among the scenarios. In alignment with the overall district situation, scenario SN2 demonstrated its capability to provide the most significant increment of floor areas among all scenarios, accompanied by the highest rise in the average UR. Except for scenario SN2, all remaining scenarios exhibited a reduction in building fraction on the ground, particularly in both sub-scenarios of SN1, SN1A and SN1B, which showed an approximate 5–7% decrease in ground coverage. This suggests the potential for the introduction of extensive open green space when undertaking a comprehensive redevelopment of the area with due regard to the BZO2016. However, buildings in both scenarios were taller than those in the other scenarios. Among the sub-scenarios of a partial redevelopment, SN3A provided the most floor areas, followed by SN5B; the realisation of both was achieved at the expense of a substantial increase in the UR. The advantages of SN4 became less clear in both SN4A and SN4B, where the increase in floor areas was not as substantial as in the other scenarios, despite having the lowest UR and ground coverage.

3.3. Impacts on the Simulated Outdoor Thermal Comfort

3.3.1. Mean Radiant Temperature over the Subsite Area

The results from the SOLWEIG model simulation underscored the variations in Tmrt observed during both daytime and nighttime, as well as the diurnal average temperature (Figure 10) across all scenarios, as delineated in Table 9. During the daytime, all scenarios generally exhibited slightly lower temperatures than the current situation, with the exceptions of scenarios SN1B and SN4B; the observed discrepancies remained within a range of 0.01 °C to 0.6 °C. A noteworthy increase in the average temperature was recorded in scenario SN1B, peaking at 37.103 °C, wherein the estimated maximum and minimum temperatures also exceeded those of the current situation. Conversely, during nighttime, scenario SN1B demonstrated a marked cooling effect, with an average temperature of approximately 14.026 °C, resulting in a decrease in the maximum temperature by approximately 1.06 °C. The nighttime average temperatures for scenarios SN1A and SN4B were also marginally lower, while the remaining scenarios reported higher average temperatures, ranging from 14.678 °C to 15.030 °C. In terms of the diurnal average temperature, scenario SN1B achieved the highest temperature at 28.449 °C. Furthermore, all scenarios employing the tower block as the redeveloped building geometry (SN1B, SN3B, SN4B, and SN5B) exhibited slightly elevated temperatures compared to those scenarios utilising the courtyard building geometry (SN1A, SN3A, SN4A, and SN5A).
The variations in the simulated average temperatures for daytime, nighttime, and diel across all scenarios are illustrated in the temperature density profiles presented in Figure 11. With the exception of minor discrepancies in the distribution of temperature values, the majority of scenarios exhibited comparable patterns in their temperature density profiles. Notably, scenario SN1B demonstrated distinct profile patterns across all three comparative diagrams: a pronounced increase in value density at elevated temperatures during both diurnal and daytime average temperatures, alongside a marked rise in density at lower temperature values during nighttime. These distinctions suggest that an increased number of areas within the subsite case are projected to experience higher temperatures during the daytime, while a greater number of areas are anticipated to exhibit lower temperatures at night in scenario SN1B.

3.3.2. Physiological Equivalent Temperature at POIs

The impacts of all densification scenarios on outdoor heat stress are depicted in Figure 12. This figure provides an overall mean of the predicted Physiological Equivalent Temperature (PET) throughout the day, summarising the temperature fluctuations at thirteen points of interest (POIs) within the subsite area, in addition to detailed PET variations over a 24 h period for each POI by scenario. The overall average PET observed throughout the day across all POIs indicated that the majority of discrepancies emerged during daytime hours, while minimal variations in temperature were recorded during the nighttime hours. The highest PET, surpassing 36 °C, was documented at 1:00 PM under both the current conditions and the scenarios SN3A, SN3B, and SN5B. Regarding the disparities in average Tmrt across the area, scenarios SN1A, SN3A, SN4A, and SN5A demonstrated lower PET values from 8:00 AM to 1:00 PM, accompanied by slightly elevated PET values from 4:00 PM to 7:00 PM.
A thorough examination of each POI indicated that the specific variations in PET at each location were distinct from one another. Generally, the effects of densification and the application of building geometries on the PET at each POI emerged as two primary phenomena: variations in the range of PET values and modifications to the duration of high temperatures during the day.
At the various street locations (Streets 1–7) during the nighttime, scenario SN2 produced the highest PET values at Streets 2, 4, and 7; scenario SN5A exhibited the highest temperature at Streets 3, 5, and 6, while the highest temperature at Street 1 was recorded for scenario SN4A. Scenario SN1B demonstrated a cooling effect at nearly all points, with the exception of Street 2, where scenario SN4B performed marginally better. During the daytime, scenario SN5B at Street 2 and scenario SN1B at Street 5 exhibited a notable increase in peak PET, specifically 0.82 °C and 0.24 °C above the current situation, respectively; conversely, the most significant cooling effect was achieved by scenario SN5A, which resulted in a temperature approximately 1.0 °C lower than the current PET at Street 1. Scenarios SN1A and SN5A delayed the onset of high PET by approximately three hours and abbreviated the duration of elevated temperatures at Street 1. At Street 2, scenarios SN4B and SN5B commenced much earlier than other scenarios in producing PET values exceeding 30 °C and prolonged the duration of elevated temperatures, whereas scenario SN5A significantly curtailed the duration of the hot period. At Street 5, scenario SN1B exhibited an exceptionally extended duration of high temperatures, commencing from 9:00 AM to 7:00 PM.
In the open spaces of the area, scenario SN1A demonstrated cooling effects during nighttime, specifically at OpenSpace 1 and OpenSpace 2, as well as scenario SN1B at OpenSpace 3. Other scenarios resulted in warmer temperatures relative to the PET compared to the current situation at all nocturnal points. Scenario SN5B contributed the highest PET at OpenSpace 1, 4, and 6 during the night. At OpenSpace 2, 3, and 5, the highest nighttime PETs were recorded in scenarios SN2, SN5A, and SN1B, respectively. During the daytime, the peak PET reached 36.06 °C at OpenSpace 3 in scenario SN1B, an increase of 0.48 °C above the current situation at that location. Significant reductions in peak PETs were also observed in scenario SN1B at OpenSpace 1 and OpenSpace 5, specifically 0.74 °C and 1.79 °C, respectively. Scenarios SN1A, SN3A, SN4A, and SN5A demonstrated their capacity to reduce the hot period during daytime; conversely, scenarios SN1B, SN3B, SN4B, and SN5B initiated the hot periods earlier at most locations in the open spaces.

4. Discussion

4.1. Impacts of Densification on Existing Urban Form

Following a comprehensive examination of the current building and zoning regulations in Zurich, BZO2016, particularly concerning the provision of permissible building floor area, this study has developed five scenarios to investigate the impacts of densification on the existing urban form within the Altstetten–Albisrieden district of Zurich. These scenarios theoretically evaluate various means of redevelopment across different building and development types. While addressing the needs stemming from population growth in the region, each scenario elucidates its distinct advantages and disadvantages, accompanied by valuable insights for urban planning and design.
The complete redevelopment scenario, SN1, presented the advantage of regulating building intensity while achieving a comparatively lower UR across the area, as emphasised in the assessment of overall district densification and in the specified subsite area, defined by the established building geometries. Simultaneously, the discrepancies between the two calculations estimating the building fraction on the ground in scenarios SN1, SN1A, and SN1B underscored the significance of selecting appropriate building geometries when densifying urban environments, where a judicious design of building geometries can facilitate the allocation of ground surface for open and green spaces, thus enhancing the quality of life in a densely populated city. The adding-floors scenario applied to most buildings in the district, SN2, exhibited its advantageous position in providing additional building floor areas without impacting the ground; however, this advantage was realised at the cost of achieving the highest UR in both assessments across the district and subsite area. Despite its contribution to preserving the overall spatial texture of the existing urban form, scenario SN2 may jeopardise the provision of public facilities and infrastructure, particularly green infrastructure, as it does not present a viable opportunity for increasing open green spaces simultaneously.
Scenario SN4, along with its sub-scenarios SN4A and SN4B, which represent a synthesis of scenarios SN1 and SN2, distinguished itself among the partial densification assessments conducted across the district and within the subsite area, respectively. Given that the majority of the involved densified parcels were assumed to conform to the BZO2016 for regulated development intensity, the overall UR was recorded as the second lowest among all scenarios. Scenario SN5 and its sub-scenarios, SN5A and SN5B, further concentrated the densification process solely on parcels with structures or developments erected between 1925 and 1975. This resulted in a 27% increase in the designated building UR as determined by the BZO2016. In addition to possessing the second-highest overall UR among the scenarios, scenario SN5 may induce significant and inconsistent density changes in certain regions of the district, thereby posing challenges to the equitable use of public facilities and infrastructure networks.
Nevertheless, this study has streamlined the assessment of the impacts of densification on urban form, relying on mathematical relationships among various urban factors. It is capable of offering a broad overview concerning the potential transformation of urban spaces. Authentic urban planning and design are likely to yield more nuanced insights, which could lead to significantly diverse outcomes. The distinctions in the estimated changes in total floor areas, building footprints, and average URs following the integration of specific building geometries are presented as an example, underscoring the necessity for multi-scale forecasting for future urban transformations. This approach integrates general considerations of building typologies and geometries into micro- and meso-urban planning and design.

4.2. Impacts of Densification on the Overall Mean Radiant Temperature

One of the prevalent concerns regarding urban densification pertains to its association with the UHI effect as well as its impact on outdoor thermal comfort and public health. This study utilised various scenarios to delineate the effects of different densification methods and diverse building geometries on the subsite area.
Scenario SN2, which represents the condition of augmenting building heights by adding an additional floor to most existing structures, demonstrated a reduction of 0.60 °C and 0.23 °C in daytime and diurnal average temperatures, respectively; however, there was a corresponding increase of 0.38 °C in the average nighttime temperature. This daytime cooling effect corroborates findings from previous studies that attributed it to the expansion of shaded areas [5,6,31,35]; nonetheless, the nighttime warming effect has yet to be thoroughly examined. As forty metres and sixty metres have been identified as two pivotal turning points in the relationships between building height and its influence on the urban climate [32], the addition of floors to existing buildings or the moderation of building heights in future developments may constitute a beneficial strategy for the overall urban climate. However, considerable attention must be directed towards understanding the impact of taller buildings on nighttime temperature variations, which could potentially lead to an increase in the prevalence of tropical nights.
Scenarios SN1A and SN1B simulated instances whereby exemplary building geometries, specifically courtyard and tower blocks, were employed across the entire area, thus establishing two contrasting urban morphologies. Owing to the requirement for a minimum distance between structures, scenario SN1B exhibited dispersed tower blocks, culminating in taller buildings with reduced ground-level building fractions compared to those observed in scenario SN1A. Following the simulation, scenario SN1A exhibited minimal temperature variation across all simulated scenarios. In contrast, scenario SN1B displayed substantially warmer daytime and diurnal average temperatures, with increases of 1.42 °C and 0.65 °C above the present conditions, respectively, alongside a more pronounced cooling effect during nighttime average temperatures, which were approximately 0.63 °C lower than current levels. This finding, which contradicts the conclusions drawn by Wang et al. [32] regarding the relationships between building height, FAR, ground-level building fraction, and temperature variation, may be attributable to the fact that scenario SN1B did not produce as extensive a shaded area as scenario SN1A during daytime; however, the open spaces between building blocks facilitated the dissipation of warm air during nighttime. This suggests that an optimal building geometry for densification in Zurich should integrate characteristics of both courtyard and tower blocks to maximise the mitigation effects on UHI.
The partial densification scenarios, with the exception of scenario SN4B, exhibited temperature variation patterns similar to those observed in scenario SN2, wherein simulation results indicated significantly lower average temperatures during the day, yet higher temperatures at night, alongside lower diurnal average temperatures throughout the day compared to the current situation, although the temperature alterations were not as pronounced as those recorded in scenario SN2. Scenario SN4B displayed an inverse temperature alteration pattern, indicating slightly warmer daytime temperatures and cooler nighttime temperatures, accompanied by a diurnal temperature increase of less than 0.01 °C, representing the minimal alteration across all scenarios, despite exhibiting a warming effect. Although the majority of scenarios, excluding scenarios SN1B and SN4B, revealed diurnal average temperatures lower than the current conditions, the warmer nighttime temperatures suggest that further efforts are necessary to seek solutions to address the challenge of elevated nighttime temperatures, which constitute one of the primary factors influencing individual health.

4.3. Impacts of Densification on PET

This study utilised thirteen points of interest (POIs) in the area to examine the impact of densification scenarios at the specified locations. The simulated results indicated that the geometries of buildings also influenced outdoor thermal comfort during the densification process, with this influence demonstrating strong correlations with the time of day and the locations associated with the particular POIs.
During nighttime, open spaces in scenarios featuring courtyard blocks were estimated to be cooler than those in scenarios with tower blocks, although the differences were minimal. Conversely, street points within the courtyard scenarios were found to be warmer than those within the tower block scenarios. In the daytime prior to 12:00 PM, the street points in the courtyard scenarios were observed to be cooler than those in the tower block scenarios. From 1:00 PM to 7:00 AM, the PET values at most POIs in the courtyard scenarios were higher than those in the tower scenarios. Notably, OpenSpace 3 exhibited an exceptional situation throughout the time frames and scenarios, indicating the presence of other influential factors in the estimation of PET.
Regarding the locations, the fluctuation of PET values at each site suggests the influence of building placements on outdoor thermal comfort. It indicates that when densification occurred along the eastern and southern sides of the area, such as at points OpenSpace 1, 2, and 4, and Street 1, 3, and 5, PET values began to increase later in the morning. Conversely, when densification transpired along the western side at points OpenSpace 3, 5, and 6, cooling effects were noticeable after 2:00 PM across all scenarios. In areas surrounded by dense projects, such as Street 6 and 7, lower PET values were recorded in the morning from 8:00 AM to 10:00 AM and around 5:00 PM compared to the current situation. Furthermore, during the day, courtyard blocks along the southern and eastern sides exhibited a more pronounced cooling effect than the tower blocks, as illustrated by OpenSpace 2. However, when courtyard blocks were utilised on the western side, such as at OpenSpace 5, higher PET values were observed compared to the tower block situations. This observation underscores the diverse performance of building geometries across different locations, indicating the necessity for a more judicious selection of building designs that are specifically adapted to the unique circumstances of each site in order to enhance outdoor comfort in local environments.

4.4. Limitations and Future Development

This study performed a scenario-based analysis to examine the influence of densification on existing urban forms and outdoor thermal comfort within Zurich’s urban climate. These scenarios were modelled in accordance with the most recent building and zoning plans (BZO2016), ongoing urban redevelopment projects, and the latest intensive building development geometries designed to accommodate population growth forecasts. By implementing these scenarios, the study simulated alterations in outdoor thermal comfort at the neighbourhood level.
Nevertheless, this study has some limitations. Firstly, owing to the absence of precise data on building and development specifics, particularly concerning building floor areas and the designated use of buildings for residential or commercial purposes, this study simplified the calculation of floor areas by multiplying the building footprint by the total number of complete floors above ground level, excluding auxiliary structures. While this aligns with the UR parameter indicated by BZO2016, such a calculation may not accurately represent actual densification conditions in both the current context and hypothetical scenarios. For instance, building podiums serving as garages in large developments are not included in the floor area calculations utilised. This simplification could result in discrepancies within the microclimate simulation, given that scenarios were modelled based on URs. Addressing this issue necessitates more advanced methods for large-scale scenario modelling; furthermore, relying solely on UR may not adequately regulate building intensity, and additional parameters related to thermal comfort and liveability should be integrated into building and zoning regulations.
Secondly, the study did not incorporate additional urban factors such as green surfaces and vegetation in the scenario-based investigation and simulation, primarily to concentrate on the effects of building geometries. The omission of vegetation may lead to variances in the simulation outcomes, as it influences input variables such as vegetation DSM, land cover schemes, and grassland albedo, although these parameters are optional with default values within the SOLWEIG model. Nevertheless, it is well-established that green infrastructure and vegetation surrounding buildings substantially enhance the microclimate and mitigate UHI effects. Consequently, this underscores the importance of future research to include green infrastructure for a more precise evaluation of urban microclimate dynamics.
Last but not least, given that the subsite area is situated in the centre of the district where building density is comparatively higher than in most other regions, the modelled scenarios and their simulated results may not fully encapsulate the impacts of densification in different parts of the district. Considering this concern, it is prudent to extend this study to other areas for comparative analysis, aiming to understand the influence of densification in varied urban contexts characterised by diverse existing building densities and geometries.

5. Conclusions

In the context of urban sustainable transformation to accommodate population growth in Zurich, the densification of existing city areas within the current urban boundaries has been established as the primary strategy for future development, aimed at preserving agricultural land and natural landscapes. However, the implications of intensifying current urban land use and its subsequent effects on the urban microclimate have emerged as significant concerns regarding the mitigation of urban heat islands (UHI) and the attainment of a high living quality. Various urban redevelopment strategies have been executed in individual projects throughout the city; nonetheless, a comprehensive understanding of densification is necessary to aid in planning and design.
This study generated five scenarios to evaluate the influence of various urban densification strategies on the existing urban form within the district of Altstetten–Albisrieden. It employed exemplary building geometries, such as courtyard and tower blocks, to model scenarios for outdoor thermal comfort simulations at the neighbourhood scale. The results indicated that, in order to accommodate the projected population growth, the district must increase building density, with the average utilisation ratio (UR) rising to between 1.14 and 1.29, depending on the densification strategies employed. The most recent building and planning regulation, BZO2016, has the capacity to support additional population and employment opportunities, though this would necessitate a comprehensive redevelopment of the entire district. Considering the building lifespan of fifty years, partial redevelopment, as exemplified by scenario SN4, emerged as a more advantageous solution. It effectively moderates the overall intensity of space utilisation (average UR = 1.20) while safeguarding the majority of the existing urban fabric.
The SOLWEIG model simulation of outdoor thermal comfort, based on sub-scenario models with two building geometries, indicated that densification does not necessarily worsen the microclimate. Most scenarios showed a cooling effect, with reductions of up to 0.60 °C during the daytime and across the entire diel cycle; however, a warming effect with a temperature increase of up to 0.38 °C occurred at night, except for SN1B and SN4B. The temperature variations across all scenarios highlighted both the advantages and disadvantages of using courtyard and tower building geometries in different situations, demonstrating the complex relationship between urban factors and building geometries; this was evident in fluctuating effects between day and night.
This study, which integrates the impacts of densification on urban forms and outdoor thermal comfort based on scenario-based analysis, concludes with several recommendations for the future urban development of Zurich:
  • To accommodate population growth without significantly altering the current urban fabric, it is advisable that future densification strategies incorporate building replacements and the addition of floors to existing structures.
  • Densification of buildings can increase shaded areas during the day and contribute to lower temperatures. Nonetheless, it is recommended that building heights should not exceed forty metres within regulatory frameworks to maintain the cooling benefits.
  • The simulation additionally indicated a warming effect during the night in most scenarios, implying that the assessment of new urban redevelopment should place a greater emphasis on performance during the blue hours.
  • Given the complex interactions affecting outdoor thermal comfort and the microclimate, a more meticulous selection of building geometries should be incorporated in the process of redevelopment and urban transformation.

Author Contributions

Conceptualization, Y.J.; Methodology, Y.J.; Software, Y.J.; Validation, Y.J.; Formal Analysis, Y.J.; Investigation, Y.J.; Resources, Y.J.; Data Curation, Y.J.; Writing—Original Draft Preparation, Y.J.; Writing—Review and Editing, Y.J.; visualisation, Y.J.; Supervision, S.M.; Project Administration, Y.J.; Funding Acquisition, S.M. All authors have read and agreed to the published version of the manuscript.

Funding

This research was conducted at the Future Cities Lab Global at ETH Zurich. Future Cities Lab Global is supported and funded by the National Research Foundation, Prime Minister’s Office, Singapore under its Campus for Research Excellence and Technological Enterprise (CREATE) programme and ETH Zurich (ETHZ), with additional contributions from the National University of Singapore (NUS), Nanyang Technological University (NTU), Singapore, and the Singapore University of Technology and Design (SUTD).

Data Availability Statement

The data presented in this study are available on request from the corresponding author.

Acknowledgments

Special thanks to Roderic Günter and Caspar Trüb, who worked as research assistants in the Dense and Green Cities module. Their cooperation, kind support, and insightful feedback throughout the research period contributed extraordinarily to the improvement of the paper’s quality.

Conflicts of Interest

The authors declare no conflicts of interest.

Abbreviations

The following abbreviations are used in this manuscript:
BZO2016Building and Zoning Regulation, Version 2016
BZO99Building and Zoning Regulation, Version 1999
DEMDigital Elevation Model
DSMDigital Surface Model
EPWEnergy Plus Weather
FARFloor Area Ratio
GsPRGreen Surface Plot Ratio
PETPhysiological Equivalent Temperature
POIPoint of Interest
SN1Densification Scenario 1
SN1ASub-Scenario 1 with Courtyard Geometry
SN1BSub-Scenario 1 with Tower Geometry
SN2Densification Scenario 2
SN3Densification Scenario 3
SN3ASub-Scenario 3 with Courtyard Geometry
SN3BSub-Scenario 3 with Tower Geometry
SN4Densification Scenario 4
SN4ASub-Scenario 4 with Courtyard Geometry
SN4BSub-Scenario 4 with Tower Geometry
SN5Densification Scenario 5
SN5ASub-Scenario 5 with Courtyard Geometry
SN5BSub-Scenario 5 with Tower Geometry
SOLWEIGSolar and Longwave Environmental Irradiance Geometry Model
TmrtMean Radiant Temperature
UHIUrban Heat Island
UMEPUrban Multi-Scale Environmental Predictor
URUtilisation Ratio

Appendix A. Details in the Methods

Appendix A.1. Collected Data and Information for This Study

Table A1. Collected data and information for this study.
Table A1. Collected data and information for this study.
Data/InformationContents
Demographic information
Demographic Statistics of ZurichAnnual statistics of resident population in each quartier and district, as well as projected population until 2045 [51].
Quartierspiegel: AltstettenBiennial reports of the Quartier, including information of resident population and job positions, of the year 2014, 2020, 2022, and 2024 [38,39,46,48].
Quartierspiegel: AlbisriedenBiennial reports of the Quartier, including information of resident population and job positions, of the year 2014, 2020, 2022, and 2024 [45,47,49,50].
Meteorological information
Repository of Building Simulation Climate Data (Affoltern Zurich Station, period: July 6th to 12th)Meteorological information formatted in Energy Plus Weather (EPW) acquired from the Ladybug Tools website [40,41]: a year’s worth of hourly measurements, including the following:
  • Measured time and date;
  • Air temperature;
  • Net all-wave radiation;
  • Incoming short- and longwave radiation;
  • Direct shortwave radiation;
  • Diffuse shortwave radiation;
  • Wind speed and direction;
  • Relative humidity;
  • Atmospheric pressure;
  • Precipitation/rainfall.
Geographic Information
Amtlichen Vermessung (Official Survey) 2D open-source data of Zurich, including
Building information:
  • Building ID;
  • Building geometries;
  • Building types;
  • Building construction/redevelopment year.
Land use:
  • Land parcels;
  • Roads and streets;
  • Green surfaces;
  • Grey surfaces.
3D-Blockmodell LoD1 (3D Building Block Model)3D open-source building model of Zurich, including
Building information:
  • Height of the ground floor above sea level;
  • Height of the roof ridge above sea level;
  • Average height of ridge and eaves above sea level;
  • Height of the eaves above sea level.
SwissALTI3D Open-source digital elevation model of Switzerland
Zoning Plans
Zonenplan 1999 and 2016 (Zoning Plan 1999 and 2016)The shapefile and regulations of the zoning plan developed in 1999 and 2016, including land parcel development rules:
  • Type of zones;
  • Utilisation ratio (UR);
  • Max. number of floors;
  • Max. height of development;
  • Max. ground coverage/min. open or green space coverage on the ground;
  • Min. residential ratio;
  • Min. distance between buildings.

Appendix A.2. Correlation Between Resident Population and Job Positions in Altstetten–Albisrieden

This study used the relationship between the number of job positions and the resident population of Altstetten–Albisrieden to forecast the number of jobs in 2040. Figure A1 shows the linear correlation, and the formula was applied to estimate the job count.
Figure A1. Correlation Between resident population and job positions in Altstetten–Albisrieden.
Figure A1. Correlation Between resident population and job positions in Altstetten–Albisrieden.
Land 14 01516 g0a1

Appendix A.3. Input Information for the SOLWEIG Model Simulation in UMEP

Table A2. Input information for the SOLWEIG model simulation in UMEP.
Table A2. Input information for the SOLWEIG model simulation in UMEP.
Input InformationDescription
Spatial data
Building and ground DSMGenerated by Pre-Processor of UMEP, based on scenario building shapefiles and DEM of Zurich, 1 m by 1 m resolution
SkyViewFactorGenerated by Pre-Processor of UMEP, based on scenario building shapefiles
Vegetation scheme (optional)No
Land cover scheme (optional)No
Ground DEMDEM of Zurich, 1 m by 1 m resolution
Save generated building gridYes
Wall aspect rasterGenerated by Pre-Processor of UMEP, based on scenario building shapefiles
Wall height rasterGenerated by Pre-Processor of UMEP, based on scenario building shapefiles
Use anisotropic modelNo
Meteorological data
Use continuous meteorological datasetYes, converted by Pre-Processor of UMEP, based on the meteorological data downloaded from EPW map: Affoltern Zurich Station, period: July 6th to 12th
UTC offset (hours)2
Environmental parameters
Emissivity (walls)0.90
Emissivity (ground)0.95
Albedo (walls)0.20
Albedo (ground)0.15
Tmrt parameters
Absorption of shortwave radiation0.70
Absorption of longwave radiation0.95
Posture of the bodyStanding
PET parameters
Age35
Weight (kg)75.0
Activity (w)80.0
Height (cm)180
Clothing (clo)0.90
Sexmale
Include POIsYes, the shapefile generated in QGIS
Consider human as cylinderYes

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Figure 1. Upgrade of Building and Zoning Plan from BZO 99 (A) to BZO 2016 (B), taking the Altstetten–Albisrieden district as an example.
Figure 1. Upgrade of Building and Zoning Plan from BZO 99 (A) to BZO 2016 (B), taking the Altstetten–Albisrieden district as an example.
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Figure 2. Cumulated Building Floor Areas and the reduction in green spaces in Altstetten–Albisrieden, Zurich.
Figure 2. Cumulated Building Floor Areas and the reduction in green spaces in Altstetten–Albisrieden, Zurich.
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Figure 3. Methodological framework of the study. The light grey blocks signify input data and information, while the dark grey blocks indicate outputs addressing the specific results.
Figure 3. Methodological framework of the study. The light grey blocks signify input data and information, while the dark grey blocks indicate outputs addressing the specific results.
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Figure 4. Location of the studied district, Altstetten–Albisrieden, Zurich.
Figure 4. Location of the studied district, Altstetten–Albisrieden, Zurich.
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Figure 5. Workflow of calculating the permitted increment of building floor areas according to the BZO2016 regulations and particular situations of land parcels in Altstetten–Albisrieden.
Figure 5. Workflow of calculating the permitted increment of building floor areas according to the BZO2016 regulations and particular situations of land parcels in Altstetten–Albisrieden.
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Figure 6. Exemplary projects and developments representing different densification and urban redevelopment means. Photo by Yingying Jiang (top and bottom) and Michele Limina (middle).
Figure 6. Exemplary projects and developments representing different densification and urban redevelopment means. Photo by Yingying Jiang (top and bottom) and Michele Limina (middle).
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Figure 7. Subsite area in Altstetten–Albisrieden, its existing situation of buildings and land parcels.
Figure 7. Subsite area in Altstetten–Albisrieden, its existing situation of buildings and land parcels.
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Figure 8. Exemplary building geometries in the recent developments in Altstetten–Albisrieden.
Figure 8. Exemplary building geometries in the recent developments in Altstetten–Albisrieden.
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Figure 9. Variation in parcel UR in five densification scenarios compared to the current situation.
Figure 9. Variation in parcel UR in five densification scenarios compared to the current situation.
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Figure 10. Diurnal average temperature (Tmrt) in the Subsite Case by scenario.
Figure 10. Diurnal average temperature (Tmrt) in the Subsite Case by scenario.
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Figure 11. Simulated average temperature (Tmrt) density profiles by scenario.
Figure 11. Simulated average temperature (Tmrt) density profiles by scenario.
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Figure 12. Average physiological equivalent temperature (PET) of a day at selected points of interest (POIs) by scenario in the Subsite Case.
Figure 12. Average physiological equivalent temperature (PET) of a day at selected points of interest (POIs) by scenario in the Subsite Case.
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Table 2. Current development situation of the subsite area.
Table 2. Current development situation of the subsite area.
TotalDevelopment After 1975Development 1925–1975Development Before 1925
Number of parcels1763910037
Parcel area (m2)157,52274,05165,09018,381
Current floor area (m2)258,450126,555113,11318,782
Table 3. Demands of building floor areas based on the projected population growth and job position increase in Altstetten–Albisrieden.
Table 3. Demands of building floor areas based on the projected population growth and job position increase in Altstetten–Albisrieden.
ResidentsJob Positions
Altstetten–Albisrieden in 202258,51759,149
Expected to increase by 2040958317,963
Total in 204068,10077,112
Average area per resident or position (m2)4540
Expected to increase floor area (m2)431,235718,520
Expected total floor area after an overall redevelopment (m2)3,064,5003,084,480
Total expected to increase floor area (m2)1,149,755
Expected total floor area after an overall redevelopment (m2)6,148,980
Table 4. Existing utilisation floor areas and permissible floor areas in the land parcels of three categories in Altstetten–Albisrieden.
Table 4. Existing utilisation floor areas and permissible floor areas in the land parcels of three categories in Altstetten–Albisrieden.
All Development
(n = 2894)
Developments 1925–1975
(n = 1545)
Developments After 1975
(n = 1129)
Developments Before 1925
(n = 220)
Current floor areas (m2)5,150,9711,403,7513,664,68082,540
In the parcels already beyond BZO20162,574,985423,0912,114,72022,394
In the parcels lower than BZO20162,588,556980,6601,549,96060,146
BZO-permitted floor areas (m2)6,255,3592,042,8204,065,850146,689
In the parcels already beyond BZO20161,846,436328,8301,499,00016,396
In the parcels lower than BZO20164,408,9231,713,9902,566,850130,293
Table 5. The estimated overall increment of floor areas in Altstetten–Albisrieden permitted by BZO 2016, calculated from three aspects described in Section 2.5.2.
Table 5. The estimated overall increment of floor areas in Altstetten–Albisrieden permitted by BZO 2016, calculated from three aspects described in Section 2.5.2.
TotalDemand for Population GrowthDifference
BZO 2016-permitted floor areas (m2)6,255,3596,148,980106,367 (+1.7%)
Maximum increase permitted by BZO 2016 (m2)1,750,2201,149,755600,453 (+52.2%)
Only redeveloping those older than 50 years to reach the limits of BZO2016 (m2)639,0691,149,755−510,698 (−44.4%)
Table 6. Five densification scenarios and specific redevelopment means for the parcels of different categories and development intensity.
Table 6. Five densification scenarios and specific redevelopment means for the parcels of different categories and development intensity.
Developments
Before 1925
Developments
1925–1975
Developments
After 1975
Beyond BZO 2016Lower Than BZO 2016Beyond BZO 2016Lower Than BZO 2016Beyond BZO 2016Lower Than BZO 2016
Scenario 1 (SN1)Replacing all buildings of parcels to reach the limits of the BZO 2016
Scenario 2 (SN2)MaintainAdding one floor to existing buildings
Scenario 3 (SN3)MaintainMaintainRedevelop as BZO2016MaintainAdd floors
Scenario 4 (SN4)MaintainRedevelop to meet the limits of the BZO 2016MaintainAdd floors
Scenario 5 (SN5)MaintainUR +27% upon BZO2016Maintain
Table 7. Results of the five scenarios.
Table 7. Results of the five scenarios.
Total Floor Area (m2)Average
UR
Max. Building Footprint (m2)Min. Open/Green Surface (m2)
Current5,150,9710.991,337,0303,326,100
Scenario 1 (SN1)6,255,3591.142,141,9802,521,150
Scenario 2 (SN2)6,433,5501.291,337,0303,326,100
Scenario 3 (SN3)6,313,1501.211,571,1803,091,950
Scenario 4 (SN4)6,345,6801.201,546,9403,116,190
Scenario 5 (SN5)6,327,0401.251,546,9403,116,190
Table 8. Results of densification in the subsite area after introducing the exemplary building geometries to specify urban form.
Table 8. Results of densification in the subsite area after introducing the exemplary building geometries to specify urban form.
Total
Floor Area (m2)
Building
Footprint
(m2)
Average
Floor
Number
Average
UR
Ground Coverage
Current258,44967,2773.61.6432.11%
Scenario 1 (SN1)
SN1A (Courtyard)281,13857,4615.01.7827.43%
SN1B (Tower)283,50552,4935.61.8025.05%
Scenario 2 (SN2)320,79767,2774.42.0032.11%
Scenario 3 (SN3)
SN3A (Courtyard)294,98767,1244.31.8732.04%
SN3B (Tower)289,73066,0384.21.8431.52%
Scenario 4 (SN4)
SN4A (Courtyard)285,65664,2674.31.8130.67%
SN4B (Tower)283,61163,3994.31.8030.26%
Scenario 5 (SN5)
SN5A (Courtyard)292,88164,3914.61.8630.73%
SN5B (Tower)293,90663,4654.31.8730.29%
Table 9. Simulated mean radiant temperature (Tmrt) at different periods by scenario.
Table 9. Simulated mean radiant temperature (Tmrt) at different periods by scenario.
Daytime Tmrt (°C)Nighttime Tmrt (°C)Diurnal Tmrt (°C)
Max.Min.AverageMaxMinAverageAverage
Current44.61627.39335.68419.51511.66814.65227.797
SN1A44.57627.37035.67519.53811.75214.62527.781
SN1B44.73927.74937.10318.44911.64314.02628.449
SN244.53327.31035.08319.53811.74615.03027.563
SN3A44.61427.35335.23619.53811.66814.88927.606
SN3B44.61427.35435.51219.53811.66814.73727.721
SN4A44.59027.34935.34819.53811.72614.80227.643
SN4B44.59027.35435.73419.53811.72614.58327.803
SN5A44.61627.31535.27419.53811.66814.86827.622
SN5B44.61627.35435.59219.51511.66814.67827.749
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Jiang, Y.; Menz, S. Urban Densification and Outdoor Thermal Comfort: Scenario-Based Analysis in Zurich’s Altstetten–Albisrieden District. Land 2025, 14, 1516. https://doi.org/10.3390/land14081516

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Jiang Y, Menz S. Urban Densification and Outdoor Thermal Comfort: Scenario-Based Analysis in Zurich’s Altstetten–Albisrieden District. Land. 2025; 14(8):1516. https://doi.org/10.3390/land14081516

Chicago/Turabian Style

Jiang, Yingying, and Sacha Menz. 2025. "Urban Densification and Outdoor Thermal Comfort: Scenario-Based Analysis in Zurich’s Altstetten–Albisrieden District" Land 14, no. 8: 1516. https://doi.org/10.3390/land14081516

APA Style

Jiang, Y., & Menz, S. (2025). Urban Densification and Outdoor Thermal Comfort: Scenario-Based Analysis in Zurich’s Altstetten–Albisrieden District. Land, 14(8), 1516. https://doi.org/10.3390/land14081516

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