A Machine Learning-Based Approach to Evaluate the Spatial Performance of Courtyards—A Case Study of Beijing’s Old Town
Abstract
:1. Introduction
2. Research Background and Methodology
2.1. The Current Situation of Residential Houses in the Old City of Beijing
2.2. Overview of Research Methods
3. Research Process
3.1. Performance Simulation
- (1)
- Optimize target selection
- (2)
- Parameter adjustment
- (3)
- Parametric model construction
3.2. Multi-Objective Genetic Algorithm Optimization
3.2.1. Multi-Objective Optimization
3.2.2. Building Performance Level Classification
3.3. Machine Learning Classification Prediction
3.3.1. Data Pre-Processing
- (1)
- Data collection and collation
- (2)
- Data standardization
- (3)
- Factor correlation analysis
3.3.2. Model Training
- (1)
- Data segmentation
- (2)
- Hyperparameter setting
- (3)
- Training process
3.3.3. Model Performance Evaluation
4. Results
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Architectural Parameters | Acronym | Unit | Range |
---|---|---|---|
The length of the inner courtyard | LIC | meters | 4.0~12.0 |
The width of the inner courtyard | WIC | meters | 4.0~12.0 |
Room Depth A—North and South House | RD-A | meters | 3.0~8.0 |
Room Depth B—East-West House | RD-B | meters | 3.0~8.0 |
Building height | BH | meters | 3.0~4.5 |
Window-to-wall ratio | WWR | Ratio | 0.1~0.9 |
Orientation of courtyard space | OCS | degree | −15~15 |
Algorithm Parameters | Numerical Value | Unit |
---|---|---|
Crossover Probability | 0.9 | rate |
Mutation Probability | 1/r | rate |
Crossover Distribution Index (CDI) | 20 | number |
Mutation Distribution Index (MDI) | 20 | number |
Random Seed | 1 | number |
Normal Distribution Chart | Fitness Value Distribution Chart | Mean Trend Graph | |
---|---|---|---|
Maximum DF | |||
Minimum TLI | |||
Maximum UTCI |
Level | Meet the Conditions | Program Evaluation |
---|---|---|
A | Pareto solution 20th to 40th generation TLI < 500 kWh/m2 DF: 3–9% UTCI: 8 °C–9 °C | Best building performance, considering energy consumption, light, overall thermal comfort, and excellent living conditions. |
B | Pareto solution 1st to 19th generation TLI < 500 kWh/m2 DF: 3–9% UTCI: 8 °C–9 °C | Excellent building performance, year-round energy consumption, daylighting, and courtyard space thermal comfort are among the better levels and comfortable living conditions. |
C | Pareto solution TLI > 500 kWh/m2 DF < 3%, >9% UTCI < 8 °C, >9 °C | Good building performance with average year-round energy consumption, daylighting, and thermal comfort in courtyard spaces. |
D | Non-Pareto solution TLI < 500 kWh/m2 DF: 3–9% UTCI: 8 °C–9 °C | Poorer building performance, daylighting, year-round energy consumption, and courtyard space thermal comfort, of which one of the conditions was met. |
E | Non-Pareto solution TLI > 500 kWh/m2 DF < 3%, >9% UTCI < 8 °C, >9 °C | Worst building performance, design solutions that did not meet either condition and are not recommended for implementation. |
Hyperparameters | Explanation | Numerical Value |
---|---|---|
n_estimators | The number of trees in a decision tree | 200 |
num_leaves | Number of leaves on each tree | No restrictions |
max_depth | In a decision tree, the depth of the tree | 10 |
learning_rate | Learning Rate | 0.05 |
LIC * (m) | WIC * (m) | OCS * (Degree) | RD-A * (m) | RD-B * (m) | WWR * (Ratio) | BH * (m) | Actual Grade | Projections Grade | |
---|---|---|---|---|---|---|---|---|---|
10.5 | 5 | 14 | 3 | 3.3 | 0.71 | 4 | A | A | |
4.3 | 9.8 | −7 | 3.5 | 4 | 0.85 | 3.9 | B | B | |
4.3 | 9.8 | −7 | 3 | 4.5 | 0.85 | 3.9 | D | D | |
7.2 | 7.1 | −13 | 3.5 | 4.2 | 0.7 | 3.8 | A | A | |
4 | 4.2 | −7 | 3 | 3 | 0.75 | 3.9 | A | B | |
11.8 | 10.9 | 4 | 3.4 | 3.1 | 0.8 | 4.5 | D | D | |
11.6 | 11.5 | 3 | 4 | 4.1 | 0.79 | 4.3 | C | C | |
5.2 | 4.2 | 3 | 3 | 6 | 0.25 | 3.5 | E | E |
DF | UTCI | Annual Energy Consumption | |
---|---|---|---|
01 | 8.757925 | 8.62 | 490.747546 |
02 | 6.964729 | 7.81 | 437.604607 |
03 | 7.336489 | 8.52 | 456.992617 |
04 | 7.737107 | 7.68 | 417.4882 |
05 | 7.640545 | 9.3 | 491.926498 |
06 | 12.211328 | 9.01 | 528.093835 |
07 | 9.333964 | 9.42 | 445.841812 |
08 | 1.615759 | 8.72 | 357.249975 |
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Yu, T.; Zhan, X.; Tian, Z.; Wang, D. A Machine Learning-Based Approach to Evaluate the Spatial Performance of Courtyards—A Case Study of Beijing’s Old Town. Buildings 2023, 13, 1850. https://doi.org/10.3390/buildings13071850
Yu T, Zhan X, Tian Z, Wang D. A Machine Learning-Based Approach to Evaluate the Spatial Performance of Courtyards—A Case Study of Beijing’s Old Town. Buildings. 2023; 13(7):1850. https://doi.org/10.3390/buildings13071850
Chicago/Turabian StyleYu, Tianqi, Xiaoqi Zhan, Zichu Tian, and Daoru Wang. 2023. "A Machine Learning-Based Approach to Evaluate the Spatial Performance of Courtyards—A Case Study of Beijing’s Old Town" Buildings 13, no. 7: 1850. https://doi.org/10.3390/buildings13071850
APA StyleYu, T., Zhan, X., Tian, Z., & Wang, D. (2023). A Machine Learning-Based Approach to Evaluate the Spatial Performance of Courtyards—A Case Study of Beijing’s Old Town. Buildings, 13(7), 1850. https://doi.org/10.3390/buildings13071850