Publications

Ma, HX; Kong, JL; Zhong, YL; Jiang, YZ; Zhang, QT; Wang, LZ; Wang, XX; Zhang, JY (2023). The optimization of XGBoost model and its application in PM2.5 concentrations estimation based on MODIS data in the Guanzhong region, China. INTERNATIONAL JOURNAL OF REMOTE SENSING, 2184217.

Abstract
Atmospheric pollution affects air quality and can pose a serious risk to public health. Traditional PM2.5 monitoring is limited by the uneven distribution of ground stations, which makes it difficult to obtain spatially continuous and accurate PM2.5 concentrations information. Using aerosol optical depth (AOD) retrieved from satellite remote sensing to study the temporal and spatial variation characteristics of PM2.5 can accurately predict the PM2.5 concentrations in a wide range and provide a basis for atmospheric pollution prevention and control. Considering the spatio-temporal correlations among the data, this study uses AOD data, introduces geographic location data, temporal data, meteorological data, and elevation data to construct an Optimized XGBoost (O-XGBoost) model with spatial and temporal characteristics to estimate PM2.5 concentrations in the Guanzhong region from 2019 to 2021 and analyse its spatial and temporal distribution characteristics. The results show that compared with the random forest (RF) and XGBoost models, the O-XGBoost model has higher estimation accuracy, with R-2, RMSE, and MAE of 0.873, 11.460 mu g . m(-3), and 8.061 mu g . m(-3), respectively. The estimation of PM2.5 concentrations based on the O-XGBoost model makes up for the uneven distribution of ground monitoring stations and improves the estimation accuracy.

DOI:
10.1080/01431161.2023.2184217

ISSN:
1366-5901