Improving air quality assessment using physics-inspired deep graph learning

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Abstract

Abstract Existing methods for fine-scale air quality assessment have significant gaps in their reliability. Purely data-driven methods lack any physically-based mechanisms to simulate the interactive process of air pollution, potentially leading to physically inconsistent or implausible results. Here, we report a hybrid multilevel graph neural network that encodes fluid physics to capture spatiotemporally dynamic characteristics of air pollutants. On a multi-air pollutant test in China, our method consistently improved extrapolation accuracy by an average of 11–22% compared to representative machine learning methods, and generated physically consistent spatiotemporal trends of air pollutants at regional and fine scales.

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last seen: 2026-05-19T01:45:01.086888+00:00