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Space-Time Ground-Level PM_(2.5) Distribution at the Yangtze River Delta: A Comparison of Kriging, LUR, and Combined BME-LUR Techniques

机译:长江三角洲的时空地面PM_(2.5)分布:Kriging,LUR和BME-LUR技术的比较

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摘要

Ambient air PM2.5 is one of the major pollutants linked to respiratory and lung diseases in the Yangtze River Delta (YRD), which is China's leading economic region and one of the top economic regions worldwide. The main objectives of this work is to compare the accuracy of some widely-used techniques to characterize and predict the space-time distribution of ground-level PM2.5 in the YRD, and to propose a synthesis of techniques that can yield better results than previous techniques. First, a land-use regression (LUR) model is implemented using the relevant data bases (such as air quality, aerosol optical depth, AOD, Modern-Era Retrospective analysis for Research and Applications, MERRA, meteorological monitoring, road networks information, longitude, latitude, elevation and land-use data). Then, the synthesis of the LUR and the Bayesian maximum entropy (BME) techniques is proposed and implemented, for the first time, in the study of PM2.5 concentrations over the YRD region. It was found that the combined (integrated) BME-LUR technique generated PM2.5 concentration estimates showing a 28.34% improvement in accuracy (R-2 indicator) compared to the standard LUR technique, and a 12.53% improvement compared to the mainstream geostatistical Kriging technique.
机译:环境空气PM2.5是与长江三角洲(YRD)的呼吸系统和肺病有关的主要污染物之一,这是中国领先的经济区和全球最高经济地区之一。这项工作的主要目标是比较一些广泛使用的技术的准确性来表征和预测yrd中地面PM2.5的空间分布,并提出可以产生更好的结果的技术合成以前的技术。首先,使用相关数据库(如空气质量,气溶胶光学深度,AOD,现代时代回顾性分析,Merra,气象监测,道路网络信息,经度,纬度,海拔和土地利用数据)。然后,首次在YRD区域的PM2.5浓度研究中提出并实施了LUR和贝叶斯最大熵(BME)技术的合成。发现与标准LUR技术相比,组合(集成的)BME-LUR技术产生的PM2.5浓度估计显示精度(R-2指示器)的提高28.34%,与主流地质统计克里格相比,改进12.53%技术。

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