Monitoring Trends of CO, NO2, SO2, and O3 Pollutants Using Time-Series Sentinel-5 Images Based on Google Earth Engine

Mohammad Kazemi Garajeh, G. Laneve, Hamid Rezaei, M. Sadeghnejad, Neda Mohamadzadeh, Behnam Salmani
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引用次数: 4

Abstract

Air pollution (AP) is a significant risk factor for public health, and its impact is becoming increasingly concerning in developing countries where it is causing a growing number of health issues. It is therefore essential to map and monitor AP sources in order to facilitate local action against them. This study aims at assessing the suitability of Sentinel-5 AP products based on Google Earth Engine (GEE) to monitor air pollutants, including CO, NO2, SO2, and O3 in Arak city, Iran from 2018 to 2019. Our process involved feeding satellite images to a cloud-free GEE platform that identified pollutant-affected areas monthly, seasonally, and annually. By coding in the JavaScript language in the GEE, four pollution parameters of Sentinel-5 satellite images were obtained. Following that, images with clouds were filtered by defining cloud filters, and average maps were extracted by defining average filters for both years. The employed model, which solely used Sentinel-5 AP products, was tested and assessed using ground data collected from the Environmental Organization of Central Province. Our findings revealed that annual CO, NO2, SO2, and O3 were estimated with RMSE of 0.13, 2.58, 4.62, and 2.36, respectively, for the year 2018. The annual CO, NO2, SO2, and O3 for the year 2019 were also calculated with RMSE of 0.17, 2.41, 4.31, and 4.6, respectively. The results demonstrated that seasonal AP was estimated with RMSE of 0.09, 5.39, 0.70, and 7.81 for CO, NO2, SO2, and O3, respectively, for the year 2018. Seasonal AP was also estimated with RMSE of 0.12, 4.99, 1.33, and 1.27 for CO, NO2, SO2, and O3, respectively, for the year 2019. The results of this study revealed that Sentinel-5 data combined with automated-based approaches, such as GEE, can perform better than traditional approaches (e.g., pollution measuring stations) for AP mapping and monitoring since they are capable of providing spatially distributed data that is sufficiently accurate.
基于Google Earth Engine的Sentinel-5时间序列图像监测CO、NO2、SO2和O3污染物趋势
空气污染是公共健康的一个重要风险因素,其影响在发展中国家日益引起关注,造成越来越多的健康问题。因此,必须绘制和监测AP来源,以便促进当地采取行动。本研究旨在评估基于谷歌地球引擎(GEE)的Sentinel-5 AP产品在2018 - 2019年伊朗阿拉克市监测CO、NO2、SO2和O3等空气污染物的适用性。我们的过程包括将卫星图像提供给无云的GEE平台,该平台每月、季节性和每年确定受污染的地区。通过在GEE中使用JavaScript语言进行编码,得到了Sentinel-5卫星图像的4个污染参数。然后,通过定义云过滤器过滤带有云的图像,并通过定义这两个年份的平均过滤器提取平均地图。所采用的模型仅使用Sentinel-5 AP产品,使用中部省环境组织收集的地面数据进行测试和评估。研究结果表明,2018年全年CO、NO2、SO2和O3的RMSE分别为0.13、2.58、4.62和2.36。2019年全年CO、NO2、SO2和O3的RMSE分别为0.17、2.41、4.31和4.6。结果表明,2018年CO、NO2、SO2和O3的季节AP RMSE分别为0.09、5.39、0.70和7.81。2019年CO、NO2、SO2和O3的季节性AP的RMSE分别为0.12、4.99、1.33和1.27。这项研究的结果表明,Sentinel-5数据与基于自动化的方法(如GEE)相结合,在AP制图和监测方面的表现优于传统方法(如污染测量站),因为它们能够提供足够准确的空间分布数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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