• Public-data-driven ML model evaluates pedestrian-level air temperature • Point-based morphology surpasses site-averaged indicators in temperature evaluation • Diurnal variability dominates over monsoon effects on model accuracy • Final model achieves high accuracy (R² = 0.99, MSE = 0.23°C², error < 1°C) • Scalable, real-time framework deployed in an interactive microclimate platform Rapid urbanization and climate change have intensified thermal stress in high-density tropical cities, where pedestrian-level air temperature is shaped by atmospheric conditions and three-dimensional morphology. This study develops a high-resolution, rapid, and generalizable model to estimate pedestrian-level air temperature using only publicly accessible meteorological data and GIS-derived morphological indicators. To capture fine-scale spatial variability, a new point-based indicator called the surrounding building height-to-distance ratio (H/D) is introduced and integrated with conventional site-averaged metrics. Using Singapore as a representative tropical city, six machine-learning algorithms were benchmarked to identify the best-performing approach. Two modelling strategies were then compared: a year-round model and microclimate-specific models stratified by monsoon season and diurnal cycle. Results indicate that nighttime models (trained on 7 PM-7 AM data) achieve the highest accuracy, followed closely by the year-round model (trained on full annual data), while daytime models (7 AM-7 PM) demonstrated slightly weaker generalization. Consequently, the final framework employs nighttime models during 7 PM-7 AM and the year-round model during 7 AM-7 PM, with diurnal variability exerting a much stronger influence than seasonal monsoon differences. The final model achieved R² = 0.99 and MSE = 0.23°C², with typical evaluation errors below 1°C. SHAP analysis highlights strong morphology-meteorology interactions and shows that point-based indicators outperform site-averaged metrics in shaping local air temperature. Practically, the 1-meter, minute-scale model rapidly generates continuous thermal maps capturing fine-grained urban heterogeneity. Integrated into the Microclimate Digital Platform, it enables on-demand pedestrian-level temperature prediction, providing a scalable and data-efficient tool for real-time thermal assessment and heat-resilient planning in tropical high-density cities.
Building similarity graph...
Analyzing shared references across papers
Loading...
Yilu Luo
Bui Do Phuong Tung
Chao Yuan
Building and Environment
National University of Singapore
Building similarity graph...
Analyzing shared references across papers
Loading...
Luo et al. (Sat,) studied this question.
www.synapsesocial.com/papers/69a7611ec6e9836116a2ebc7 — DOI: https://doi.org/10.1016/j.buildenv.2026.114374