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首页> 外文期刊>Environmental Pollution >Urban population exposure to tropospheric ozone: A multi-country forecasting of SOMO35 using artificial neural networks
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Urban population exposure to tropospheric ozone: A multi-country forecasting of SOMO35 using artificial neural networks

机译:城市人口暴露于对流层臭氧中:使用人工神经网络对SOMO35进行多国预测

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摘要

Urban population exposure to tropospheric ozone is a serious health concern in Europe countries. Although there are insufficient evidence to derive a level below which ozone has no effect on mortality WHO (World Health Organization) uses SOMO35 (sum of means over 35 ppb) in their health impact assessments. Is this paper, the artificial neural network (ANN) approach was used to forecast SOMO35 at the national level for a set of 24 European countries, mostly EU members. Available ozone precursors' emissions, population and climate data for the period 2003-2013 were used as inputs. Trend analysis had been performed using the linear regression of SOMO35 over time, and it has demonstrated that majority of the studied countries have a decreasing trend of SOMO35 values.The created models have made majority of predictions ( approximate to 60%) with satisfactory accuracy (relative error 20%) on testing, while the best performing model had R-2 = 0.87 and overall relative error of 33.6%. The domain of applicability of the created models was analyzed using slope/mean ratio derivate from the trend analysis, which was successful in distinguishing countries with high from countries with low prediction errors. The overall relative error was reduced to 14%, after the pool of countries was reduced based on the abovementioned criterion. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在欧洲国家中,城市人口暴露于对流层臭氧是一个严重的健康问题。尽管没有足够的证据得出臭氧对死亡率没有影响的水平,但世界卫生组织(世界卫生组织)在其健康影响评估中使用SOMO35(均值总和超过35 ppb)。在本文中,使用了人工神经网络(ANN)方法对一组24个欧洲国家(主要是欧盟成员国)在全国范围内预测SOMO35。将2003-2013年期间可用的臭氧前体的排放量,人口和气候数据用作输入。使用SOMO35随时间的线性回归进行趋势分析,结果表明大多数被研究国家的SOMO35值呈下降趋势。所创建的模型已对大多数预测(约60%)做出了令人满意的准确性(相对误差小于20%),而性能最佳的模型的R-2 = 0.87,总体相对误差为33.6%。使用趋势分析得出的斜率/均值比率分析了所创建模型的适用范围,该方法成功地将高误差国家与低误差预测国家区分开来。在根据上述标准减少了国家组之后,总体相对误差降低到<14%。 (C)2018 Elsevier Ltd.保留所有权利。

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