Literature DB >> 33139054

Satellite-based ground PM2.5 estimation using a gradient boosting decision tree.

Tianning Zhang1, Weihuan He2, Hui Zheng3, Yaoping Cui2, Hongquan Song1, Shenglei Fu4.   

Abstract

Fine particulate matter with an aerodynamic diameter less than 2.5 μm (PM2.5) is one of the major air pollutants risks to human health worldwide. Satellite-based aerosol optical depth (AOD) products are an effective metric for acquiring PM2.5 information, featuring broad coverage and high resolution, which compensate for the sparse and uneven distribution of existing monitoring stations. In this study, a gradient boosting decision tree (GBDT) model for estimating ground PM2.5 concentration directly from AOD products across China in 2017, integrating human activities and various natural variables was proposed. The GBDT model performed well in estimating temporal variability and spatial contrasts in daily PM2.5 concentrations, with relatively high fitted model (10-fold cross-validation) coefficients of determination of 0.98 (0.81), low root mean square errors of 3.82 (11.57) μg/m3, and mean absolute error of 1.44 (7.45) μg/m3. Seasonal examinations revealed that summer had the cleanest air with the highest estimation accuracies, whereas winter had the most polluted air with the lowest estimation accuracies. The model successfully captured the PM2.5 distribution pattern across China in 2017, showing high levels in southwest Xinjiang, the North China Plain, and the Sichuan Basin, especially in winter. Compared with other models, the GBDT model showed the highest performance in the estimation of PM2.5 with a 3-km resolution. This algorithm can be adopted to improve the accuracy of PM2.5 estimation with higher spatial resolution, especially in summer. In general, this study provided a potential method of improving the accuracy of satellite-based ground PM2.5 estimation.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Aerosol optical depth; Air pollution; MODIS; Machine learning; Particulate matter

Year:  2020        PMID: 33139054     DOI: 10.1016/j.chemosphere.2020.128801

Source DB:  PubMed          Journal:  Chemosphere        ISSN: 0045-6535            Impact factor:   7.086


  2 in total

1.  Modeling household online shopping demand in the U.S.: a machine learning approach and comparative investigation between 2009 and 2017.

Authors:  Limon Barua; Bo Zou; Yan Zhou; Yulin Liu
Journal:  Transportation (Amst)       Date:  2021-12-02       Impact factor: 4.814

2.  Prediction Performance Comparison of Risk Management and Control Mode in Regional Sites Based on Decision Tree and Neural Network.

Authors:  Wenhui Zhu; Jun He; Hongzhen Zhang; Liang Cheng; Xintong Yang; Xiahui Wang; Guohua Ji
Journal:  Front Public Health       Date:  2022-05-26
  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.