Abstract

This study proposes a convolutional neural network (CNN) that enhances the resolution of instantaneous snapshots of three-dimensional air temperature and wind velocity fields around buildings in urban areas. The CNN not only increases the resolution of flow fields but also recovers the missing data associated with changes in resolution-dependent building shapes. The proposed CNN incorporates gated convolution, which is an image inpainting technique that infers missing pixels, to improve accuracy. The CNN performance has been verified via supervised learning utilizing building-resolving micrometeorological simulations around Tokyo Station in Japan. The CNN has successfully reconstructed the temperature and velocity fields around the high-resolution buildings, despite the missing data at lower altitudes due to the coarseness of the low-resolution buildings. This result implies that near-surface flows can be inferred from flows above buildings. This hypothesis has been assessed through numerical experiments in which all inputs below a certain height are set as missing values. This research suggests that airflows around buildings can be efficiently estimated by combining neural network inferences and low-resolution fluid simulations.

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