Daylighting Performance Simulation and Optimization Design of a “Campus Living Room” Based on BIM Technology—A Case Study in a Region with Hot Summers and Cold Winters
Abstract
1. Introduction
2. Literature Review
2.1. Current Status of BIM Technology Application in Daylighting Simulation
2.2. Key Issues in Lighting Design for Hot-Summer and Cold-Winter Areas
2.3. Inadequacy of Existing Research and Breakthrough Points of This Topic
3. Research Methodology
3.1. Research Framework
3.2. Modeling Tools and Parameter Settings
3.2.1. BIM Modeling Platforms
3.2.2. Meteorological Data and Geographical Location
3.2.3. Material and Construction Parameters
- The materials used in the enclosure structure are shown in Table 1.
- 2.
- Door and window system: uniformly adopt 6Low-E + 12A + 6C double silver Low-E glass (visible light transmission ratio 0.76, shading coefficient 0.42); window frames are broken-bridge aluminum alloy (structural light-blocking discount coefficient 0.80), and the door light-transmitting area ratio is 0.3.
- 3.
- Interior finishes: beige blending paint for the walls (reflection ratio of 0.70) and neutral stone for the floor (reflection ratio of 0.30) to enhance the effect of secondary lighting through the optimization of the reflection ratio.
3.3. Lighting Simulation Method and Index System
3.3.1. Simulation Platforms and Engines
3.3.2. Simulation Types and Parameters
- Static simulation: set CIE full cloudy sky conditions (outdoor illuminance 13,500 lx); grid accuracy is set to “actuarial” (0.5 m × 0.5 m); calculate the average value of the lighting coefficient and uniformity.
- Dynamic simulation: based on the annual meteorological data, calculate the annual average illuminance and the proportion of hours meeting the standard (the number of hours ≥300 lx/the total number of hours per year), and verify the requirement of “the average number of hours of lighting illuminance ≥ 300 lx ≥ 4 h/d” in the “Green Building Evaluation Standard”.
- Glare analysis: midday (12:00) on the summer solstice was selected as a typical moment to calculate the uncomfortable glare index (DGI) of the critical area and assess the visual comfort (threshold DGI ≤ 28) [18].
3.3.3. Assessment of the Indicator System
3.4. Optimization Strategies and Iterative Methods
3.4.1. Multi-Objective Optimization Framework
3.4.2. Iterative Optimization Process
- Problem diagnosis: based on the initial simulation results, identify the lighting shortage areas (e.g., DF < 2% in the inner zone), glare exceeding points (DGI > 28), and energy consumption bottlenecks.
- Strategy generation:
- (1)
- Window opening optimization: adjust the window–wall ratio, sill height (e.g., from 0.6 m to 0.2 m), and window opening ratio (height/width optimized from 2:1 to 1:2).
- (2)
- Spatial intervention: add 8 m × 12 m lighting courtyard and introduce top light guide tube (tube diameter 300–400 mm, bending angle 12°).
- (3)
- Sunshade design: adopt adjustable inner louvers (45° during the summer solstice, 90° during the winter solstice), combined with fixed sunshade boards (width of 2 m, spacing of 2 m).
- Simulation verification: update Revit model after each optimization, re-export the gbXML file and import it into HYBPA 2024, and compare the DF, DGI, and hours of compliance before and after optimization.
3.5. Description of Methodological Limitations
- Meteorological data accuracy: The current simulation is based on typical annual data and does not take into account the effects of extreme weather (e.g., continuous overcast).
- Simplification of the dynamic environment: the shading effect of indoor furniture and people’s activities on lighting is not fully quantified.
- Multi-physical field coupling: unlinked energy consumption simulation (e.g., the interaction between lighting and air-conditioning loads), which can be deepened subsequently in combination with EnergyPlus.
4. Case Design
4.1. Design Overview
4.2. Design Options
4.2.1. Construction Program
4.2.2. BIM Modeling
4.2.3. Setting Simulation Parameters
4.2.4. Simulation Results and Discussion
4.3. Optimization of Design Measures
4.4. Simulation of Optimized Design of Facade Window Openings
4.4.1. Exterior Window Opening Program Design
4.4.2. Discussion of Simulation Results
4.5. Secondary Optimization Design Simulation
4.5.1. Adjustment of Sill Height
4.5.2. Addition of Courtyard Space
4.5.3. Adding Top Lighting
4.5.4. Glare Simulation and Sunshade Design
5. Conclusions and Outlook
5.1. Main Findings
- (1)
- Traditional empirical daylighting design methods are difficult to adapt to green building needs. The quantitative analysis of indicators such as mean value of lighting coefficient [23], indoor illuminance [24], uncomfortable glare index [25], and average annual sunshine hours [26] based on BIM technology provides a scientific reference for the lighting design of living rooms in campus in hot-summer and cold-winter areas.
- (2)
- A single large-area external window lighting method cannot meet the lighting requirements of green buildings, and the use of a hybrid lighting method of the side [27] and top [28] and the setting of appropriate shading measures according to the simulation results can significantly improve the indoor light environment.
- (3)
- Single static simulation has limited support for building energy efficiency and comfort improvement. The combination of static and dynamic daylighting simulation and glare numerical calculation can provide more comprehensive data support and optimization direction for building design.
5.2. Research Limitations
5.3. Research Outlook
- (1)
- Promote the integration of cross-standard evaluation systems: In optimization strategies, further deepen the synergistic application of WELL standards with domestic standards. This should not only reference their higher-level requirements for “visual comfort” (e.g., DGI ≤ 25) and introduce new indicators such as “per capita effective daylighting area” (≥3.5 m2/person), but also incorporate detailed indicators from WELL v2, such as “circadian rhythm lighting design” and “the impact of light environments on cognitive performance” [29], to establish a multi-tiered evaluation system covering basic performance, health benefits, and human adaptability and achieve systematic application in campus buildings in regions with hot summers and cold winters.
- (2)
- Improve the accuracy and adaptability of meteorological data. Future research should focus on the long-term impact of climate change on building light environments, conduct future light environment prediction simulations for the site where the building design is located, such as incorporating future climate scenario prediction data to simulate light environment changes around 2050, and assess the long-term adaptability of building designs to help buildings better adapt to climate change.
- (3)
- Incorporate dynamic indoor environmental factors. Convert dynamic factors such as pedestrian flow and furniture arrangement into corresponding daylighting simulation parameters to further enhance the practicality and comfort of daylighting design.
- (4)
- Explore intelligent building daylighting systems. With the help of the Internet of Things [30], artificial intelligence [31], and other technologies, further explore the application of intelligent control systems in building daylighting design, such as automatically adjusting window shading [32], light intensity [33], and indoor temperature and humidity [34] based on weather conditions, light changes, and usage requirements to achieve real-time and accurate control of the light environment.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Material Name | Thermal Conductivity W/(m·K) | Reflection Ratio |
---|---|---|
240 mm shale brick | 0.58 | 0.32 |
120 mm reinforced concrete slab + insulation layer | 0.75 | 0.84 |
Indicator Category | Core Indicators | Standard Limit | Data Sources |
---|---|---|---|
Daylight level | Lighting factor (DF) | Class III rooms ≥ 3.3% | Static simulation |
Uniformity | Lighting uniformity | Type III rooms ≥ 0.6 | Static simulation |
Dynamic applicability | Proportion of annual hours of compliance | ≥60% | Dynamic simulation |
Visual comfort | Discomfort Glare Index (DGI) | ≤25–28 | Critical Moment Simulation |
Energy efficiency | Reduction rate of energy consumption for artificial lighting | ≥20% | Energy consumption linkage analysis |
Typology | Room Name | Planned Room Area (m2) | Note |
---|---|---|---|
Space for maneuver | Function room | 900 square meters | Art and calligraphy, music and dance, editorial and creative writing, etc.; 5–6 rooms |
Administration building | Departmental offices | 80 square meters | 4–6 rooms, 20 m2/room |
Exhibition space | Showroom | 600 square meters | |
Leisure space | Teahouse | 120 square meters | |
Reading space | Library reading room | 120 square meters | |
Academic exchange | Multi-purpose hall | 300 square meters | 300 m2/room |
Auxiliary space | Ancillary rooms | 1100 square meters | Transportation space, restrooms, etc., depending on design |
Add up the total | 3200 square meters (±10%) |
Main Time of Day | Sun Altitude Angle (θ) | Height of Window Top − Height of Window Sill (m) | Indoor Projection Length of Sun Rays (m) | Compliance with the Indoor Projection Length Standard of Sun Rays | Indoor Projection Length Standard of Sun Rays (m) |
---|---|---|---|---|---|
Vernal Equinox (20 March) | 61.4° | 2.8 m | 1.58 m | Yes | 1 m–2 m |
Summer Solstice (21 June) | 84.9° | 2.8 m | 0.25 m | Yes | 0.2 m–0.5 m |
Autumnal Equinox (23 September) | 61.4° | 2.8 m | 1.58 m | Yes | 1 m–2 m |
Winter Solstice (21 December) | 37.9° | 2.8 m | 3.59 m | Yes | >3 m |
Space Name | Room Name | Daylight Rating | Preset Lighting Types | Daylight Saving Factor Limit Value (%) | Lighting Compliance Area Ratio Limit (%) | Lighting Uniformity Limit | Glare Index Limit (DGI) | Window-to-Ground Ratio (WFR) |
---|---|---|---|---|---|---|---|---|
Lobbies | Walkways (educational buildings) | V | Side lighting | ≥1.100 | ≥60% | ≥0.300 | ≤28 | 0.100 |
Aisles | Walkways (educational buildings) | V | Side lighting | ≥1.100 | ≥60% | ≥0.300 | ≤28 | 0.100 |
Patio | Walkways (educational buildings) | V | Side lighting | ≥1.100 | ≥60% | ≥0.300 | ≤28 | 0.100 |
Teahouse | Specialized classrooms (educational buildings) | III | Side lighting | ≥3.300 | ≥60% | ≥0.600 | ≤25 | 0.200 |
Function room | Specialized classrooms (educational buildings) | III | Side lighting | ≥3.300 | ≥60% | ≥0.600 | ≤25 | 0.200 |
Auditorium | Lecture halls (educational buildings) | III | Side lighting | ≥3.300 | ≥60% | ≥0.500 | ≤25 | 0.200 |
Flight of stairs | Stairwells (educational buildings) | V | Side lighting | ≥1.100 | ≥60% | ≥0.300 | ≤28 | 0.100 |
Restrooms | Restrooms (educational buildings) | V | Side lighting | ≥1.100 | ≥60% | ≥0.300 | ≤28 | 0.100 |
Reading rooms | Reading rooms (library building) | III | Side lighting | ≥3.300 | ≥60% | ≥0.600 | ≤25 | 0.200 |
Showroom | Exhibition halls (museum buildings) | IV | Side lighting | ≥2.200 | ≥60% | ≥0.600 | ≤27 | 0.167 |
Conference room | Treasury (museum building) | V | Side lighting | ≥1.100 | ≥60% | ≥0.200 | ≤28 | 0.100 |
Business premises | Office (office building) | III | Side lighting | ≥3.300 | ≥60% | ≥0.500 | ≤25 | 0.200 |
Janitorial office | Office (office building) | III | Side lighting | ≥1.100 | ≥60% | ≥0.400 | ≤25 | 0.100 |
Window Program | Opening Height (m) | Opening Width (m) | Wall Between Windows (m) | Approximate Ratio of Window Openings (Height/Width) |
---|---|---|---|---|
Option 1 | 2.8 | 1.5 | 0.9 | 2:1 |
Option 2 | 2.8 | 3.0 | 1.5 (large face width) 0.3 or 0.9 (small face width) | 1:1 |
Option 3 | 2.8 | 4.0 | 1.5 (large face width) 0.3 or 0.9 (small face width) | 2:3 |
Option 4 | 2.8 | 5.5 | 1.5 (large face width) 0.3 or 0.9 (small face width) | 1:2 |
Design Scheme | Average Daylight Factor Simulation | Indoor Illuminance Simulation |
---|---|---|
Centralized | ||
Scheme 1 | ||
Scheme 2 | ||
Scheme 3 | ||
Scheme 4 |
Design Proposal | Courtyard Illustration | Simulation of the Average Value of the Lighting Coefficient | Indoor Illumination Simulation |
---|---|---|---|
Scenario A | sunless | ||
Scenario B | Shades with a width of 2 m and a length of 8 m were used with a spacing of 2 m. | ||
Scenario C | Shades with a width of 1 m and a length of 8 m were used with a spacing of 1 m. |
Addition of Top Lighting | Annual Average Illuminance Simulation | Simulation of Average Annual Hours | Achievement Determination Schematic Diagram |
---|---|---|---|
Dynamic simulation | |||
Dynamic simulation optimization |
Lighting Zones to Which the Room Belongs | Room Name | Analog Point Name | DGI Calculated Values | DGI Limits | Whether or Not the Conditions Are Met | |
---|---|---|---|---|---|---|
Calculated values for first floor planar glare simulation | III | Office 2 | Simulation point 1 | 21.128342 | 25 | fulfillment |
Activity room 2 | Simulation point 2 | 0 | 25 | fulfillment | ||
Reading rooms | Simulation point 3 | 0 | 25 | fulfillment | ||
Simulation point 4 | 0 | 25 | fulfillment | |||
Auditorium | Simulation point 5 | 16.303476 | 25 | fulfillment | ||
Simulation point 6 | 17.658905 | 25 | fulfillment | |||
Simulation point 7 | 16.886646 | 25 | fulfillment | |||
Simulation point 8 | 17.610703 | 25 | fulfillment | |||
IV | Exhibition Hall 1 | Simulation point 9 | 24.230068 | 27 | fulfillment | |
Exhibition Hall 2 | Simulation point 10 | 0 | 27 | fulfillment | ||
Simulation point 11 | 0 | 27 | fulfillment | |||
Simulation point 12 | 0 | 27 | fulfillment | |||
V | Stairwell 1 | Simulation point 13 | 0 | 28 | fulfillment | |
Aisle 1 | Simulation point 14 | 0 | 28 | fulfillment | ||
Simulation point 15 | 0 | 28 | fulfillment | |||
Lobbies | Simulation point 16 | 22.777187 | 28 | fulfillment | ||
Simulation point 17 | 24.129299 | 28 | fulfillment | |||
Stairwell 2 | Simulation point 18 | 19.306282 | 28 | fulfillment | ||
Aisle 2 | Simulation point 19 | 17.782026 | 28 | fulfillment | ||
Simulation point 20 | 0 | 28 | fulfillment | |||
Simulation point 21 | 22.873875 | 28 | fulfillment | |||
Calculated values for second floor planar glare simulation | III | Activity room 4 | Simulation point 22 | 0 | 25 | fulfillment |
Simulation point 23 | 0 | fulfillment | ||||
Simulation point 24 | 13.862787 | fulfillment | ||||
Simulation point 25 | 16.069291 | fulfillment | ||||
Activity room 6 | Simulation point 26 | 0 | 25 | fulfillment | ||
Teahouse | Simulation point 27 | 0 | 25 | fulfillment | ||
Simulation point 28 | 0 | 25 | fulfillment | |||
IV | Exhibition Hall 3 | Simulation point 29 | 0 | 27 | fulfillment | |
Simulation point 30 | 0 | 27 | fulfillment | |||
Simulation point 31 | 0 | 27 | fulfillment | |||
V | Stairwell 4 | Simulation point 32 | 0 | 28 | fulfillment | |
Stairwell 5 | Simulation point 33 | 16.806961 | 28 | fulfillment | ||
Aisle 3 | Simulation point 34 | 12.465942 | 28 | fulfillment | ||
Simulation point 35 | 0 | 28 | fulfillment | |||
Simulation point 36 | 11.904585 | 28 | fulfillment |
Design Proposal | Static Simulation | Simulation of the Average Value of the Lighting Coefficient | Indoor Illumination Simulation |
---|---|---|---|
Option A | summer solstice | ||
winter solstice | |||
Option B | summer solstice | ||
winter solstice |
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Share and Cite
Zeng, Q.; Ou, G. Daylighting Performance Simulation and Optimization Design of a “Campus Living Room” Based on BIM Technology—A Case Study in a Region with Hot Summers and Cold Winters. Buildings 2025, 15, 2904. https://doi.org/10.3390/buildings15162904
Zeng Q, Ou G. Daylighting Performance Simulation and Optimization Design of a “Campus Living Room” Based on BIM Technology—A Case Study in a Region with Hot Summers and Cold Winters. Buildings. 2025; 15(16):2904. https://doi.org/10.3390/buildings15162904
Chicago/Turabian StyleZeng, Qing, and Guangyu Ou. 2025. "Daylighting Performance Simulation and Optimization Design of a “Campus Living Room” Based on BIM Technology—A Case Study in a Region with Hot Summers and Cold Winters" Buildings 15, no. 16: 2904. https://doi.org/10.3390/buildings15162904
APA StyleZeng, Q., & Ou, G. (2025). Daylighting Performance Simulation and Optimization Design of a “Campus Living Room” Based on BIM Technology—A Case Study in a Region with Hot Summers and Cold Winters. Buildings, 15(16), 2904. https://doi.org/10.3390/buildings15162904