Abstract

Due to the country’s rapid economic growth, the problem of air pollution in China is becoming increasingly serious. In order to achieve a win-win situation for the environment and urban development, the government has issued many policies to strengthen environmental protection. PM2.5 is the primary particulate matter in air pollution, so an accurate estimation of PM2.5 distribution is of great significance. Although previous studies have attempted to retrieve PM2.5 using geostatistical or aerosol remote sensing retrieval methods, the current rough resolution and accuracy remain as limitations of such methods. This paper proposes a fine-grained spatiotemporal PM2.5 retrieval method that comprehensively considers various datasets, such as Landsat 8 satellite images, ground monitoring station data, and socio-economic data, to explore the applicability of different machine learning algorithms in PM2.5 retrieval. Six typical algorithms were used to train the multi-dimensional elements in a series of experiments. The characteristics of retrieval accuracy in different scenarios were clarified mainly according to the validation index, R2. The random forest algorithm was shown to have the best numerical and PM2.5-based air-quality-category accuracy, with a cross-validated R2 of 0.86 and a category retrieval accuracy of 0.83, while both maintained excellent retrieval accuracy and achieved a high spatiotemporal resolution. Based on this retrieval model, we evaluated the PM2.5 distribution characteristics and hourly variation in the sample area, as well as the functions of different input variables in the model. The PM2.5 retrieval method proposed in this paper provides a new model for fine-grained PM2.5 concentration estimation to determine the distribution laws of air pollutants and thereby specify more effective measures to realize the high-quality development of the city.

Highlights

  • Introduction published maps and institutional affilWith the continuous advancement of urbanization and industrialization, the problem of air pollution has become increasingly serious

  • The spatiotemporal resolutions used in relevant studies on PM2.5 concentration estimation are mostly at the kilometerscale [5,6] and daily-scale [7,8], which limits the dynamic assessment of air pollution and human exposure in local areas

  • It can be found that except for the retrieval results of the regression tree (RT) model, which has several high PM2.5 areas in the southwest, the distribution estimated by the other models is consistent, which reflects the overall accuracy of the retrieval model

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Summary

Introduction

With the continuous advancement of urbanization and industrialization, the problem of air pollution has become increasingly serious. Mostly PM2.5, can cause severe harm to the regional ecological environment and human health [1,2]. PM2.5 concentrations is key to PM2.5 pollution research [4]. The spatiotemporal resolutions used in relevant studies on PM2.5 concentration estimation are mostly at the kilometerscale [5,6] and daily-scale [7,8], which limits the dynamic assessment of air pollution and human exposure in local areas. Under the background of building an ecologically civilized society in a holistic way and pursuing sustainable urban development, PM2.5 retrieval with a high spatiotemporal resolution and a high level of accuracy is crucial

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