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Forecasting human exposure to PM10 at the national level using an artificial neural network approach

机译:使用人工神经网络方法在国家一级预测人类对PM10的暴露

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摘要

A neural network model for predicting country-level concentrations of the fraction of particulates in the air with sizes less than 10mm (PM10) has been developed using widely available sustainability and economical/industrial parameters as inputs. The model was trained and validated with the data for 23 European Union (EU) countries plus the EU27 as a group for the period from 2000 to 2008. The inputs for the model were selected using correlation analyses. Country-level PM10 concentration data that were used as a model output were obtained from the World Bank. The artificial neural network (ANN) model, created with inputs chosen by correlation analyses, has shown very good performance in the forecast of country-level PM10 concentrations. The mean absolute error for the ANN model prediction, in the case of most of the EU countries, was less than 13%, indicating stable and accurate predictions. The predictions obtained from the principal component regression model, which was trained and tested using the same datasets and input variables, had mean absolute errors from 20% to 150% for most of the countries. The wide availability of input parameters used in this model can overcome the problem of lack and scarcity of data in many countries, which can in turn prevent the determination of human exposure to PM10 at the national level.
机译:使用广泛可用的可持续性和经济/工业参数作为输入,已经开发了一种神经网络模型,用于预测尺寸小于10毫米(PM10)的空气中颗粒物的国家/地区浓度。对该模型进行了训练,并使用了2000年至2008年期间欧盟(EU)23个国家和欧盟27国的数据进行了验证。使用相关分析选择模型的输入。从世界银行获得了用作模型输出的国家级PM10浓度数据。用相关分析选择的输入创建的人工神经网络(ANN)模型在预测国家级PM10浓度方面表现出了非常好的性能。在大多数欧盟国家中,ANN模型预测的平均绝对误差小于13%,表明预测稳定且准确。从主成分回归模型获得的预测(使用相同的数据集和输入变量进行了训练和测试)对于大多数国家/地区而言,平均绝对误差为20%至150%。该模型中使用的输入参数的广泛可用性可以克服许多国家缺乏数据和数据稀缺的问题,这反过来又可以阻止在国家一级确定人类对PM10的暴露程度。

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