4.7 Article

A Deep Learning Approach to Increase the Value of Satellite Data for PM2.5 Monitoring in China

Journal

REMOTE SENSING
Volume 15, Issue 15, Pages -

Publisher

MDPI
DOI: 10.3390/rs15153724

Keywords

PM2 5; air pollution; neural network; full-coverage

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Limitations in current PM2.5 monitoring affect air quality management and health risk assessment. Ground-based monitoring networks provide data in highly populated regions, but gaps exist in spatial coverage. Satellite-derived aerosol optical properties can complement ground-based monitoring, but are hindered by cloudy/hazy conditions or nighttime. In this study, a deep spatiotemporal neural network (ST-NN) is introduced to overcome these limitations and provide high-resolution and complete coverage of PM2.5 concentrations. Validation shows accurate results, and better spatiotemporal distributions will improve health studies and air quality predictions.
Limitations in the current capability of monitoring PM2.5 adversely impact air quality management and health risk assessment of PM2.5 exposure. Commonly, ground-based monitoring networks are established to measure the PM2.5 concentrations in highly populated regions and protected areas such as national parks, yet large gaps exist in spatial coverage. Satellite-derived aerosol optical properties serve to complement the missing spatial information of ground-based monitoring networks. However, satellite remote sensing AODs are hampered under cloudy/hazy conditions or during nighttime. Here we strive to overcome the long-standing restriction that surface PM2.5 cannot be obtained with satellite remote sensing under cloudy/hazy conditions or during nighttime. In this work, we introduce a deep spatiotemporal neural network (ST-NN) and demonstrate that it can artfully fill these observational gaps. We quantified the quantitative impact of input variables on the results using sensitivity and visual analysis of the model. This technique provides ground-level PM2.5 concentrations with a high spatial resolution (0.01 & DEG;) and 24-h temporal coverage, hour-by-hour, complete coverage. In central and eastern China, the 10-fold cross-validation results show that R-2 is between 0.8 and 0.9, and RMSE is between 6 and 26 (& mu;g m(-3)). The relative error varies in different concentration ranges and is generally less than 20%. Better constrained spatiotemporal distributions of PM2.5 concentrations will contribute to improving health effects studies, atmospheric emission estimates, and air quality predictions.

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