大气与环境光学学报 ›› 2026, Vol. 21 ›› Issue (2): 267-281.doi: 10.3969/j.issn.1673-6141.2026.02.006

• 环境光学监测技术 • 上一篇    

基于MAIAC AOD的关中地区PM2.5质量浓度估算

徐翠玲*, 袁兵, 胡雪   

  1. 长安大学地质工程与测绘学院, 陕西 西安 710054
  • 收稿日期:2024-04-24 修回日期:2024-07-26 出版日期:2026-03-28 发布日期:2026-03-27
  • 通讯作者: E-mail: cuilingx@chd.edu.cn E-mail:cuilingx@chd.edu.cn
  • 作者简介:徐翠玲 (1978- ), 女, 陕西大荔人, 博士, 讲师, 主要从事大气环境遥感方面的研究。 E-mail: cuilingx@chd.edu.cn
  • 基金资助:
    中央高校基本科研业务费专项资金项目 (300102269112), 陕西省重点研发项目 (2020ZDLSF0607)

Estimation of PM2.5 mass concentration in Guanzhong based on MAIAC AOD

XU Cuiling*, YUAN Bing, HU Xue   

  1. School of Geological Engineering and Geomatics, Chang'an University, Xi'an, 710054, China
  • Received:2024-04-24 Revised:2024-07-26 Online:2026-03-28 Published:2026-03-27

摘要: 为获取关中地区高分辨率连续PM2.5质量浓度空间分布, 提高模型估算精度, 为关中地区污染治理提供有力 的数据支撑, 本文基于2019―2021 年多角度大气校正算法获取的气溶胶光学厚度数据 (MAIAC AOD) 和实测PM2.5质 量浓度数据, 并考虑气象、归一化植被指数 (NDVI) 和高程 (DEM) 等因素, 构建了MLP、SVM和XGBoost 机器学习模 型进行关中地区2019―2021 年的PM2.5质量浓度估算。结果表明: 3 种模型中, XGBoost 模型估算R2最大, 均方根误 差 (RMSE) 和平均绝对误差 (MAE) 最小, 模型表现最佳。利用XGBoost 模型从年、季、月尺度估算关中地区PM2.5质量 浓度, 3 年的年均PM2.5质量浓度分别为23.79、24.38 和22.83 μg/m³, 呈现下降趋势, PM2.5质量浓度高值区域范围也逐 年缩小; 季均PM2.5质量浓度估算显示, 关中地区冬季污染最为严重, 夏季污染最轻; 月均PM2.5质量浓度分布与季节 保持一致, 其中1 月份PM2.5质量浓度最高, 均值高达60.73 μg/m³, 9 月份PM2.5质量浓度最低, 均值为12.91 μg/m³。

关键词: PM2.5, 多角度大气校正算法, 气溶胶光学厚度, 机器学习, PM2.5-AOD关系模型

Abstract: Objective PM2.5, defined as fine particulate matter with an aerodynamic diameter of ≤ 2.5 μm, is a key pollutant affecting air quality and public health. Currently, the sparse and discontinuous distribution of ground monitoring stations makes it difficult to obtain spatially continuous PM2.5 mass concentration data across regions. On the other hand, traditional satellitebased estimation models (e.g., linear regression, geographically weighted regression) relying on aerosol optical depth (AOD) suffer from limitations in capturing the complex nonlinear relationships between PM2.5 and AOD and in addressing spatiotemporal heterogeneity. Moreover, previous studies have mostly employed AOD products with relatively low spatial resolution (e.g., MODIS data with 3 km or 10 km spatial resolution), which restricts the spatial detail of the estimation. To address these gaps, this study utilizes higher-resolution (1 km) Multi-Angle Implementation of Atmospheric Correction (MAIAC) AOD products combined with multi-source geospatial data to construct and compare several high-performance machine learning models. The ultimate objectives are to achieve high-precision, high-resolution estimation of PM2.5 mass concentrations in the Guanzhong region and to systematically reveal their spatiotemporal evolution patterns, thereby providing a scientific basis for targeted air pollution prevention and control. Methods The PM2.5 mass concentration estimation method proposed in this study consists of three main steps: data preparation, model construction, and spatiotemporal analysis. Firstly, the 1 km resolution MAIAC AOD data from the MCD19A2 product, ground-measured PM2.5 mass concentrations, meteorological factors, normalized difference vegetation index (NDVI) data, and digital elevation model (DEM) data of the Guanzhong region from 2019 to 2021 were integrated. And all datasets underwent spatiotemporal matching, quality control, and normalization processing. Then, to ensure an objective evaluation of the models' spatial predictive capability, a site-based cross-validation strategy was adopted to divide the data into training and test sets. Three machine learning models, namely Support Vector Machine (SVM), Multilayer Perceptron (MLP), and Extreme Gradient Boosting (XGBoost), were constructed and optimized through ten-fold crossvalidation and grid search. The performance of the three models was evaluated using the coefficient of determination, root mean square error (RMSE), and mean absolute error (MAE). Finally, the optimal model was applied to generate annual, seasonal, and monthly PM2.5 mass concentration distribution maps at 1 km resolution, enabling a detailed analysis of spatiotemporal variations. Results and Discussion The experimental results indicate that: (1) compared with the SVM and MLP models, the XGBoost model performs the best, achieving the highest coefficient of determination and the lowest RMSE and MAE, demonstrating its strong nonlinear fitting capability; (2) the annual average PM2.5 mass concentrations for 2019, 2020, and 2021 were 23.79, 24.38, and 22.83 μg/m³, respectively, showing a declining trend with a gradual reduction in the spatial extent of high-concentration areas, which may be associated with ongoing emission control policies; (3) the seasonal variation of PM2.5 in this region is significant, with the most severe pollution occurring in winter and the lowest in summer, which is closely related to the local heating demand and meteorological diffusion conditions; (4) the monthly average mass concentrations of PM2.5 in this region peak in January (60.73 μg/m³) and reach the lowest in September (12.91 μg/m³), consistent with seasonal variaion patterns. These results confirm that integrating high-resolution MAIAC AOD data with the XGBoost model can effectively improve estimation accuracy and provide detailed insights into the spatiotemporal evolution of PM2.5. Conclusions A high-resolution PM2.5 mass concentration estimation method suitable for the Guanzhong region is presented in this paper. The method is developed by combing MAIAC AOD data with the XGBoost model, effectively overcoming the limitations of traditional approaches and providing reliable, continuous PM2.5 distribution data. The experimental results not only clearly reveal the spatiotemporal patterns of PM2.5 pollution in the Guanzhong region but also offer a scientific basis for regional air quality management. Future work will focus on incorporating more real-time variables and enhancing model interpretability to further support the formulation of pollution control decisions.

Key words: PM2.5, multi-angle atmospheric correction algorithm, aerosol optical thickness, machine learning, PM2.5-AOD relationship model

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