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Using Machine Learning Approach to Evaluate the PM2.5 Concentrations in China from 1998 to 2016

机译:使用机器学习方法评估1998年至2016年中国PM2.5浓度

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Pollution is one of the main negative outcomes for rapid economic growth without sustainable development in China. Different types of pollutions are harming people's health and the impacts of pollution on environment and people's health could last for decades. Fine particulate matter(PM2.5), which is one of most common types of air pollutions in China, could penetrate and sediment in human's respiratory system and cause different kind of respiratory diseases. Research has shown the strong association between Aerosol Optical Depth (AOD) and PM2.5. For this reason, remote sensing imagery could be used to estimate the level of PM2.5 concentration near ground. With utilizing PM2.5 dataset estimated by Socioeconomic Data and Applications Center (SEDAC) and machine learning approach, this paper is aimed to provide spatiotemporal comparison of PM2.5 concentrations in China. Result from this analysis could help people to better understand the recent history and current status of PM2.5 pollution in China.
机译:污染是中国没有持续发展的快速经济增长的主要负面结果之一。不同类型的污染正在危害人们的健康,污染对环境和人们健康的影响可能持续数十年。细颗粒物(PM2.5)是中国最常见的空气污染类型之一,可渗透和沉积在人体的呼吸系统中,并引起多种呼吸系统疾病。研究表明,气溶胶光学厚度(AOD)与PM2.5之间有很强的联系。因此,可以使用遥感影像估算靠近地面的PM2.5浓度水平。利用社会经济数据与应用中心(SEDAC)估算的PM2.5数据集和机器学习方法,本文旨在提供中国PM2.5浓度的时空比较。分析的结果可以帮助人们更好地了解中国PM2.5污染的历史和现状。

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