Understanding the Influence of Built Environment Indicators on Transit-Oriented Development Performance According to the Literature from 2000 to 2023
Abstract
:1. Introduction
- (1)
- Which built environment indicators exhibit universality across TOD performance indicators (traffic, economic, environmental, and social)?
- (2)
- How can the correlation effects among built environment indicators be leveraged to more effectively enhance TOD performance?
- (3)
- Given the variability in TOD project performance, which built environment characteristics can effectively improve TOD performance?
2. Methods
3. Results
3.1. Input Elements of TOD Performance Evaluation
- As illustrated in Figure 2 and Appendix A Table A1, it is evident that numerous case studies have validated the effects of the “5D” dimension indicators proposed by Cervero et al. (2009) on TOD performance [21]. Moreover, the elements of the “5D” framework have been enriched and refined, exhibiting an improving research trend. Indicators such as pedestrian shelters, street design/geometry, the design of bus stops, the closeness centrality of stations, the betweenness centrality of stations, and the density of open space have been confirmed to influence TOD performance in transit station areas. In addition to the “5D” dimension indicators, some studies have revealed the influences of key indicators of node characters (e.g., the accessibility of the transit station, the distance to the central business district (CBD), the closeness and betweenness centrality of the station, etc.) on TOD performance, which can promote a comprehensive analysis of the different performance of TOD projects.
- 2.
- The connections among different input indicators, as shown in Figure 2, and the associations among the indicators, as listed in Appendix A Table A1, reveal significant differences in TOD performance based on built environment indicators. Moreover, the same built environment indicator may exert different influences on different TOD performance indicators. The efficiency of TOD is significantly influenced by several built environment indicators. Key indicators include the population density, diversity of land use, employment density, community livability, distance to transit stations, and development density. Among these, the distance to transit stations has been extensively studied, with approximately 50 studies verifying its influence on TOD performance [4,27,37,38]. This indicator has the most significant effect on traffic performance within TOD, although its direct impact on environmental performance remains less empirically supported.
- 3.
- The cliques formed among different input indicators, as shown in Figure 3, reveal symbiotic coexistence and mutual influence relationships among various built environment indicators. In the present analysis of TOD performance, the values of association among different inputs were obtained by calculating the degree of centrality of each key input constituting a clique. This approach made it possible to clarify and measure the features of associations among different indicators of the built environment, as indicated by a large number of empirical studies. This is evidenced in Figure 3a, in which factors such as the population density, diversity of land use, residential density, development density, density of retail facilities, closeness centrality of stations, betweenness centrality of stations, and street connectivity exhibit positive correlations. In Figure 3b, the employment density exhibits positive correlations with the diversity of land use, the density of street intersections, the residential density, the betweenness centrality of the station area, the accessibility of the transit station, and the job accessibility.
3.2. Indicators of TOD Performance Evaluation and Their Influencing Factors
- In traffic performance, public transit use (Appendix B, item 4), walking/cycling (Appendix B, item 5), VMT, vehicle use, and pedestrian accessibility have been intensively studied;
- In economic performance, researchers have examined residential property values, land prices/rents, customers/sales, economic activities, and commercial property values;
- In environmental performance, environment satisfaction and energy efficiency have been intensively studied;
- In social performance, researchers have studied residential selection, connections with neighbors, safety, and diverse needs.
3.2.1. TOD Traffic Performance and Its Influencing Factors
- First, related studies have confirmed the different effects of built environment indicators on TOD traffic performance. The most frequently validated input indicators, from highest to lowest frequency, are as follows: population density, diversity of land use, employment density, distance to transit stations, walkability, and the density of street intersections.
- Second, the influences of some built environment indicators on TOD traffic performance exhibit common features. Studies have shown that transit use and walking/cycling in rail station areas can be enhanced by optimizing the population density, employment density, distance to transit station, and diversity of land use. Vehicle use and household VMT can be reduced by improving the employment density, population density, and diversity of land use.
- Third, current studies on TOD traffic performance focus on the public transit share rate (transit use, vehicle use, walking/cycling, etc.) and VMT. Although some studies have addressed performance related to specific traffic behaviors (pedestrian counts, walking distance/time, pedestrian accessibility, efficient mobility, etc.) and their influencing factors, more empirical studies are needed to understand general features. For example, do indicators like the density of street intersections, walkability, pedestrian facilities, street design, and aesthetics universally impact the walking distance/time? Do parking spaces around the station areas, the number of bus stops/routes, the average block size, and the distance to transit stations universally impact transit use?
- Additionally, some built environment indicators were found to exhibit abnormal effects in their relationship with TOD traffic performance indicators. For example, the average block size within a station area is not positively correlated with transit use. High-density street networks with small blocks promote connectivity and walking/cycling. However, as the block size increases to its threshold, low connectivity among blocks reduces transit use [39]. Similarly, the number of parking spaces exhibits a threshold effect; effective parking-space planning must balance convenience with encouraging transit use to ensure reasonable utilization [27].
3.2.2. TOD Economic Performance and Its Influencing Factors
- The distance to the transit station has the most significant direct impact on TOD economic performance, with its negative correlation with economic performance indicators (e.g., residential property values, land prices/rents, commercial property prices) confirmed in many empirical cases;
- Second, other indicators that had a confirmed association with TOD economic performance in some empirical cases should also be used as a reference for performance optimization. These indicators include the following:
- Residential property values are positively correlated with walkability, the density of street intersections, rental units, job accessibility, the area of parking spaces, and retail employment density, but are uncertainly correlated with population density in the station area [41]. In high-density environments, residential property values are positively correlated with population density, with a threshold present. Conversely, in low-density environments, they show a negative correlation [42].
- The economic vitality in station areas could be promoted by improving their employment density, closeness centrality, and betweenness centrality, as well as the closeness and betweenness centrality of the station area and the accessibility of the station space.
3.2.3. TOD Environmental Performance and Its Influencing Factors
- With increases in the diversity of land use and the population density, the environmental burden also intensifies, making it crucial to optimize the land use layout in station areas [44]. Furthermore, high population density development imposes high demands on the spatial environmental carrying capacity [40].
- 2.
- Appropriate development density and diversity of land use can reduce dependence on private vehicles and increase transit use, thus reducing traffic congestion and greenhouse gas emissions [45]; however, development with a high density might lower livability and cause various externalities, such as crowded living and the excessive use of air-conditioning [46]. This principle applies to cities located in both Western and Asian regions.
- 3.
- Optimizing the aesthetic characteristics of station area spaces, enhancing the quality of the walking environment, increasing the accessibility of groceries, and optimizing street design can improve residents’ satisfaction with the TOD environment.
- 4.
- Vibrations and noise generated by the operation of TOD station areas can easily be transmitted to nearby buildings, becoming a major environmental issue that triggers resident complaints and severely affects their quality of life and health [47].
3.2.4. TOD Social Performance and Its Influencing Factors
- The positive impacts of improving the distance to transit stations and access to amenities, groceries, and schools were found to be consistent in multiple studies.
- Studies on other indicators of social performance and their influencing factors are rare; nonetheless, the existing findings provide basic empirical references for future research to optimize the social performance indicators of TOD.
- Population density, employment density, and residential density are particularly crucial for TOD social performance. These indicators not only have direct impacts on specific social performance indicators, but also have close correlations with other influencing factors.
- Walkability, the development density, the distance to transit stations, and the diversity of land use also significantly influence TOD social performance. These factors have notable correlations with TOD social performance indicators, thus confirming their impacts on specific aspects of TOD social performance.
- The accessibility of groceries, amenities, and schools, as well as similar indicators, should be considered as reference points for optimizing TOD social performance due to their associative impacts on specific TOD social performance indicators.
3.3. Factors of Comprehensive TOD Performance
- First, among the 41 indicators and in addition to the “5D” dimension indicators, the 4 indicators that characterize the features of rail transit stations are the accessibility of the transit station, the distance to the CBD, the closeness centrality of the station, and the betweenness centrality of the station. These indicators were included and defined as “node characters”.
- Second, node characters can better depict the location of rail stations in an urban space, their ranking among rail transport structures, and the spatial accessibility within local transportation networks and surrounding rail stations. They also exhibit associations with the “3D” dimension indicators (density, diversity, and design) and demonstrate the differences among rail stations in TOD construction.
- Third, cross-dimensional, interdependent, and interactive associations were found to exist between the six key input indicators and the other indicators. Therefore, studying the influences of the input indicators in the “5D” dimensions and the node characters dimensions on TOD performance (traffic, economic, environmental, and social performance) and their associative characteristics can provide a more targeted theoretical basis for TOD construction and performance optimization in transit station areas.
4. Discussion
4.1. Ensuring TOD Performance Through “Density” Strategies
4.2. Ensuring TOD Performance Through “Diversity” Strategies
4.3. Ensuring TOD Performance Through “Design” Strategies
4.4. Ensuring TOD Performance Through “Distance to Transit” Strategies
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Traffic | Economic | Environment | Social | Overall | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
DCI | DCO | CL | DCI | DCO | CL | DCI | DCO | CL | DCI | DCO | CL | DCI | CL | |
Residential density | 14 | 11 | B | 11 | 1 | C | 9 | 2 | C | 9 | 3 | A | 14 | B |
Development density | 16 | 17 | B | 13 | 4 | C | 10 | 4 | B | 12 | 5 | B | 16 | A |
Building coverage ratio | 0 | 3 | D | 0 | 1 | D | 0 | B | ||||||
Population density | 32 | 54 | A | 28 | 4 | B | 17 | 4 | A | 22 | 4 | A | 33 | A |
Employment density | 22 | 47 | A | 19 | 3 | B | 10 | 3 | B | 13 | 3 | A | 22 | A |
Area of retail facilities | 13 | 13 | B | 10 | 2 | C | 7 | 1 | D | 13 | B | |||
Retail employment density | 2 | 5 | D | 2 | 3 | D | 1 | 1 | D | 2 | 2 | D | 2 | B |
Density of business | 5 | 1 | C | 3 | 1 | D | 5 | B | ||||||
Average area of building complexes | 4 | 1 | C | 4 | B | |||||||||
Job accessibility | 3 | 10 | D | 2 | 2 | D | 2 | 1 | D | 3 | B | |||
Residential accessibility | 1 | 6 | D | 1 | B | |||||||||
Accessibility of bus stops | 0 | 1 | D | 0 | 1 | D | 0 | 1 | D | 0 | B | |||
Visibility of destination | 0 | 2 | D | 0 | B | |||||||||
Accessibility of groceries | 1 | 14 | D | 0 | 1 | D | 0 | 1 | D | 0 | 3 | C | 1 | B |
Accessibility of amenities | 2 | 6 | D | 1 | 3 | D | 1 | 4 | C | 2 | B | |||
Accessibility of schools | 2 | 4 | D | 1 | 2 | D | 1 | 1 | D | 1 | 3 | C | 2 | B |
Accessibility of public safety facilities | 3 | B | ||||||||||||
Vertical mixed use | 1 | 6 | D | 0 | 1 | D | 1 | B | ||||||
Diversity of land use | 25 | 50 | A | 20 | 11 | B | 13 | 5 | A | 14 | 8 | B | 25 | A |
Rental units | 1 | 1 | D | 1 | 1 | D | 1 | B | ||||||
Residential land use | 6 | 1 | C | 3 | 1 | D | 6 | B | ||||||
Commercial land use | 7 | 2 | C | 4 | 1 | D | 7 | B | ||||||
Industrial land use | 5 | 2 | C | 5 | B | |||||||||
Mixed-use land use | 4 | 3 | C | 4 | B | |||||||||
Area of service facilities | 1 | 1 | D | 0 | 1 | D | 1 | B | ||||||
Mix of housing types | 0 | 3 | C | 1 | B | |||||||||
Balance between residence and employment | 5 | 3 | C | 5 | B | |||||||||
Mixed income | 1 | 1 | D | 0 | 1 | D | 1 | B | ||||||
Educational land use | 0 | 1 | D | 0 | B | |||||||||
Walkability | 10 | 29 | B | 5 | 4 | C | 2 | 1 | D | 1 | 7 | B | 11 | A |
Cyclability | 0 | 10 | D | 0 | 1 | D | 0 | B | ||||||
Average block size | 0 | 6 | D | 0 | 1 | D | 0 | 1 | D | 0 | B | |||
Density of street intersections | 15 | 29 | B | 12 | 2 | C | 15 | B | ||||||
Street connectivity | 7 | 7 | C | 1 | 1 | D | 7 | B | ||||||
Density of open spaces | 4 | 1 | C | 3 | 2 | D | 1 | 1 | D | 2 | 3 | C | 5 | B |
Density of cul-de-sacs | 2 | 5 | D | 2 | B | |||||||||
Sidewalk maintenance | 1 | B | ||||||||||||
Width of pedestrian sidewalks | 2 | 5 | D | 2 | B | |||||||||
Area of pedestrian sidewalks | 5 | 4 | C | 5 | 1 | C | 6 | B | ||||||
Parking spaces | 3 | 8 | D | 1 | 2 | D | 1 | 1 | D | 3 | B | |||
Closeness centrality of station areas | 6 | 1 | C | 6 | 1 | C | 6 | B | ||||||
Betweenness centrality of station areas | 7 | 1 | C | 7 | 1 | C | 7 | B | ||||||
Design of bus stops | 2 | 2 | D | 2 | B | |||||||||
Livability of communities | 16 | 1 | B | 17 | B | |||||||||
Aesthetics | 0 | 3 | D | 0 | 2 | D | 0 | B | ||||||
Total road length | 7 | 6 | C | 5 | 2 | C | 2 | 1 | D | 7 | B | |||
Total length of minor roads | 1 | 5 | D | 1 | 1 | D | 1 | B | ||||||
Total length of major roads | 1 | 3 | D | 1 | B | |||||||||
Street design/geometry | 2 | 4 | D | 2 | B | |||||||||
Pedestrian shelters | 0 | 2 | D | 0 | 1 | D | 0 | B | ||||||
Pedestrian facilities | 3 | 5 | D | 3 | B | |||||||||
Interchange station | 0 | 1 | D | 0 | B | |||||||||
Closeness centrality of stations | 4 | 1 | C | 4 | 1 | D | 4 | B | ||||||
Betweenness centrality of stations | 7 | 2 | C | 7 | 1 | C | 7 | B | ||||||
Distance to CBD | 8 | 8 | C | 8 | 5 | C | 5 | 1 | D | 8 | B | |||
Accessibility of transit stations | 11 | 2 | C | 6 | 2 | D | 11 | B | ||||||
Distance to transit stations | 17 | 43 | A | 17 | 24 | A | 10 | 2 | C | 12 | 6 | B | 17 | A |
Efficiency of transfer | 1 | 16 | D | 1 | B | |||||||||
Number of bus stops/routes | 8 | 23 | B | 6 | 2 | C | 8 | B |
Appendix B
- (1)
- The total distance traveled by a vehicle within a certain period of time is referred to as vehicle miles traveled (VMT). In different literature, the measured indicator is vehicle kilometers traveled (VKT). In this article, we categorized them as VMT.
- (2)
- In reviewing the literature, we found that some indicators, such as population density, development density, and balance between residence and employment, are two-way indicators: they not only depict the conditions of the area for TOD construction but also reflect TOD performance. For the sake of simplification, they were treated as input indicators.
- (3)
- In Figure 2 and Figure 3, the size of each dot represents the total frequency with which the correlation between this indicator and other indicators has been confirmed in the relevant literature. Moreover, the thickness of each line represents the total frequency with which the correlation between the two connected indicators has been confirmed in the relevant literature, without considering the correlations between non-key indicators.
- (4)
- In different studies, transport was categorized into public transport (bus + rail transit), rail transport, sustainable transport (non-motorized travel, i.e., bus + rail transport + walking/cycling), motor vehicle travel and so on. For our research needs, we included the impact of rail transit use in “public transport”.
- (5)
- In many studies, the effect of TOD inputs on walking and cycling was combined in discussions; for the sake of simplification, the present study included the impact of walking activities in “walking/cycling”.
- (6)
- In Figure 5, Figure 7, Figure 9, and Figure 11, the dot size represents the total frequency with which the correlations between the performance indicator and factors which influence it have been verified in the extant research, and the line thickness represents the total frequency with which the relationship between the two connecting indicators has been verified.
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Main Influential Factors | “5D” Dimensions | TOD Performance | Other Input Elements | ||||
---|---|---|---|---|---|---|---|
Traffic | Economic | Environmental | Social | Overall | |||
Distance to Transit Station | Distance to Transit | Highest | Highest | - | High | High | High |
Diversity of land use | Diversity | Highest | High | Highest | High | High | Highest |
Population density | Density | Highest | High | High | Highest | High | Highest |
Employment density | Density | Highest | High | Highest | Highest | High | Highest |
Walkability | Design | High | - | - | High | High | High |
Development density | Density | High | - | High | High | High | High |
Residential density | Density | High | - | - | Highest | - | High |
Number of bus stops/routes | Distance to Transit | High | - | - | - | - | High |
Density of street intersections | Design | High | - | - | - | - | High |
Area of retail facilities | Density | High | - | - | - | - | High |
Livability of community | Design | High | - | - | - | - | High |
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Xia, Z.; Feng, W.; Cao, H.; Zhang, Y. Understanding the Influence of Built Environment Indicators on Transit-Oriented Development Performance According to the Literature from 2000 to 2023. Sustainability 2024, 16, 9165. https://doi.org/10.3390/su16219165
Xia Z, Feng W, Cao H, Zhang Y. Understanding the Influence of Built Environment Indicators on Transit-Oriented Development Performance According to the Literature from 2000 to 2023. Sustainability. 2024; 16(21):9165. https://doi.org/10.3390/su16219165
Chicago/Turabian StyleXia, Zhengwei, Weiyao Feng, Hongshi Cao, and Ye Zhang. 2024. "Understanding the Influence of Built Environment Indicators on Transit-Oriented Development Performance According to the Literature from 2000 to 2023" Sustainability 16, no. 21: 9165. https://doi.org/10.3390/su16219165
APA StyleXia, Z., Feng, W., Cao, H., & Zhang, Y. (2024). Understanding the Influence of Built Environment Indicators on Transit-Oriented Development Performance According to the Literature from 2000 to 2023. Sustainability, 16(21), 9165. https://doi.org/10.3390/su16219165