Accurate real-time monitoring of the thermal environment is essential for mitigating the impacts of thermal stress on human health and ecosystems, particularly in regions with limited high-resolution data, such as inland China. In this study, we utilized hourly meteorological observations to derive reference thermal indices for model training and validation. We then applied Himawari-8 satellite data, digital elevation models (DEMs), and time/geographic predictors to estimate 12 human thermal indices at a spatial resolution of 5 km across Jiangxi, China. The XGBoost model demonstrated the best overall performance, with mean testing metrics for the 12 human thermal indices of R 2 = 0.987, RMSE = 0.925 °C, and MAE = 0.656 °C. The retrieval results also show a high degree of consistency with in-situ observations across both spatial and temporal domains, effectively capturing the diurnal variations and spatial heterogeneity of the urban thermal environment. Our study offers a methodological foundation for the hourly estimation of human thermal indices and supports applications such as extreme-event monitoring, urban thermal environment analysis, and heat/cold risk assessments. • An hourly human thermal monitoring method driven by the fusion of satellite-ground observations has been constructed. • Among multiple AI models, XGBoost exhibits the best estimation performance and shows strong spatio-temporal transferring ability. • The proposed model achieves high-precision, seamless, near real-time refined monitoring and early warning capabilities.
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Liu et al. (Fri,) studied this question.
www.synapsesocial.com/papers/69fd7d94bfa21ec5bbf05ee6 — DOI: https://doi.org/10.1016/j.rsase.2026.102042
Zhaohua Liu
Zhongyuan Li
Zhaoliang Zeng
Remote Sensing Applications Society and Environment
Sun Yat-sen University
Technische Universität Berlin
Chinese Academy of Meteorological Sciences
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