Geographic Graph Network for Robust Inversion of Particulate Matters

Author:

Li Lianfa

Abstract

Although remote sensors have been increasingly providing dense data and deriving reanalysis data for inversion of particulate matters, the use of these data is considerably limited by the ground monitoring samples and conventional machine learning models. As regional criteria air pollutants, particulate matters present a strong spatial correlation of long range. Conventional machine learning cannot or can only model such spatial pattern in a limited way. Here, we propose a method of a geographic graph hybrid network to encode a spatial neighborhood feature to make robust estimation of coarse and fine particulate matters (PM10 and PM2.5). Based on Tobler’s First Law of Geography and graph convolutions, we constructed the architecture of a geographic graph hybrid network, in which full residual deep layers were connected with graph convolutions to reduce over-smoothing, subject to the PM10–PM2.5 relationship constraint. In the site-based independent test in mainland China (2015–2018), our method achieved much better generalization than typical state-of-the-art methods (improvement in R2: 8–78%, decrease in RMSE: 14–48%). This study shows that the proposed method can encode the neighborhood information and can make an important contribution to improvement in generalization and extrapolation of geo-features with strong spatial correlation, such as PM2.5 and PM10.

Funder

the National Natural Science Foundation of China

Strategic Priority Research Program of the Chinese Academy of Sciences

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference110 articles.

1. Health Effects of Particulate Matter: Policy Implications for Countries in Eastern Europe, Caucasus and Central Asia,2013

2. Sensitivity of PM<sub>2.5</sub> to climate in the Eastern US: a modeling case study

3. Impacts of climate change on future air quality and human health in China

4. Air Pollution and Climate Changehttps://www.iass-potsdam.de/en/output/dossiers/air-pollution-and-climate-change

5. Long- and Short-Term Exposure to PM2.5 and Mortality

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