A Multimodal Physics-Informed Neural Network Approach for Mean Radiant Temperature Modeling
Journal:
arXiv
Published Date:
Mar 11, 2025
Abstract
Outdoor thermal comfort is a critical determinant of urban livability,
particularly in hot desert climates where extreme heat poses challenges to
public health, energy consumption, and urban planning. Mean Radiant Temperature
($T_{mrt}$) is a key parameter for evaluating outdoor thermal comfort,
especially in urban environments where radiation dynamics significantly impact
human thermal exposure. Traditional methods of estimating $T_{mrt}$ rely on
field measurements and computational simulations, both of which are resource
intensive. This study introduces a Physics-Informed Neural Network (PINN)
approach that integrates shortwave and longwave radiation modeling with deep
learning techniques. By leveraging a multimodal dataset that includes
meteorological data, built environment characteristics, and fisheye
image-derived shading information, our model enhances predictive accuracy while
maintaining physical consistency. Our experimental results demonstrate that the
proposed PINN framework outperforms conventional deep learning models, with the
best-performing configurations achieving an RMSE of 3.50 and an $R^2$ of 0.88.
This approach highlights the potential of physics-informed machine learning in
bridging the gap between computational modeling and real-world applications,
offering a scalable and interpretable solution for urban thermal comfort
assessments.