首页> 外文期刊>International Journal of Environmental Research and Public Health >Temporal and Spatial Simulation of Atmospheric Pollutant PM2.5 Changes and Risk Assessment of Population Exposure to Pollution Using Optimization Algorithms of the Back Propagation-Artificial Neural Network Model and GIS
【24h】

Temporal and Spatial Simulation of Atmospheric Pollutant PM2.5 Changes and Risk Assessment of Population Exposure to Pollution Using Optimization Algorithms of the Back Propagation-Artificial Neural Network Model and GIS

机译:反向传播-人工神经网络模型和GIS优化算法对大气污染物PM2.5变化的时空模拟和人口污染风险评估

获取原文
           

摘要

PM2.5 pollution has become of increasing public concern because of its relative importance and sensitivity to population health risks. Accurate predictions of PM2.5 pollution and population exposure risks are crucial to developing effective air pollution control strategies. We simulated and predicted the temporal and spatial changes of PM2.5 concentration and population exposure risks, by coupling optimization algorithms of the Back Propagation-Artificial Neural Network (BP-ANN) model and a geographical information system (GIS) in Xi’an, China, for 2013, 2020, and 2025. Results indicated that PM2.5 concentration was positively correlated with GDP, SO2, and NO2, while it was negatively correlated with population density, average temperature, precipitation, and wind speed. Principal component analysis of the PM2.5 concentration and its influencing factors’ variables extracted four components that accounted for 86.39% of the total variance. Correlation coefficients of the Levenberg-Marquardt (trainlm) and elastic (trainrp) algorithms were more than 0.8, the index of agreement (IA) ranged from 0.541 to 0.863 and from 0.502 to 0.803 by trainrp and trainlm algorithms, respectively; mean bias error (MBE) and Root Mean Square Error (RMSE) indicated that the predicted values were very close to the observed values, and the accuracy of trainlm algorithm was better than the trainrp. Compared to 2013, temporal and spatial variation of PM2.5 concentration and risk of population exposure to pollution decreased in 2020 and 2025. The high-risk areas of population exposure to PM2.5 were mainly distributed in the northern region, where there is downtown traffic, abundant commercial activity, and more exhaust emissions. A moderate risk zone was located in the southern region associated with some industrial pollution sources, and there were mainly low-risk areas in the western and eastern regions, which are predominantly residential and educational areas.
机译:由于PM2.5污染的相对重要性和对人群健康风险的敏感性,PM2.5污染已引起越来越多的公众关注。对PM2.5污染和人群暴露风险的准确预测对于制定有效的空气污染控制策略至关重要。通过结合反向传播人工神经网络(BP-ANN)模型和西安市地理信息系统(GIS)的优化算法,我们模拟并预测了PM2.5浓度和人群暴露风险的时空变化,中国,2013年,2020年和2025年。结果表明,PM2.5浓度与GDP,SO2和NO2正相关,而与人口密度,平均温度,降水和风速负相关。对PM2.5浓度及其影响因素的主成分分析提取了四个成分,占总方差的86.39%。 Levenberg-Marquardt(trainlm)算法和弹性(trainrp)算法的相关系数大于0.8,conceptrp和trainlm算法的一致性指数(IA)分别为0.541至0.863和0.502至0.803;均值偏差误差(MBE)和均方根误差(RMSE)表示预测值与实测值非常接近,trainlm算法的精度优于trainrp。与2013年相比,2020年和2025年PM2.5浓度的时空变化和人口受污染的风险有所下降。人口中PM2.5的高风险地区主要分布在北部地区,即市区交通,丰富的商业活动以及更多的废气排放。中等风险区位于南部地区,与一些工业污染源相关,西部和东部地区主要是低风险地区,主要是居民区和教育区。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号