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Prediction of TSP concentration in a metallurgical city of Brazil using neural networks

机译:使用神经网络预测巴西冶金城市中TSP的浓度

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The aim of this study was to predict Total Suspended Particulate concentration (TSP) in the main areas of Ipatinga, a metallurgical city located in Minas Gerais state, southeast of Brazil. Artificial neural networks (ANN) were the modelling tool used. This model is able to predict pollutant concentration just by training the input and output parameters. The input parameters were meteorological such as wind direction, wind speed, rain, and ambient temperature and also seasonal such as, summer and winter. The output parameter used was the historical data of the total suspended particulate concentration taken between 1996 and 2004. In the modelling, the multilayer perceptron (MLP) model was tested. Among the MLP configurations evaluated, the topology 13-7-6 was chosen. The validation of the model was done by comparing the simulated with the observed values. The results of this model were also compared with the industrial source complex short-term dispersion model (ISCST3). The four statistical tools used to evaluate the fitting were mean squared error (MSE), fractional bias (FB), index of agreement (IA) and linear correlation coefficient (R). Comparing the results it was seen that the predicted values were better in some boroughs and were overestimated in others. Besides, the predicted results of the ANN model were better than the ISCST3 dispersion model.
机译:这项研究的目的是预测位于巴西东南部米纳斯吉莱斯州的冶金城市伊帕廷加的主要地区的总悬浮颗粒物浓度(TSP)。人工神经网络(ANN)是所使用的建模工具。该模型仅通过训练输入和输出参数就能够预测污染物浓度。输入参数是气象参数,例如风向,风速,雨水和环境温度,还包括季节性,例如夏季和冬季。所使用的输出参数是1996年至2004年之间获得的总悬浮颗粒物浓度的历史数据。在建模中,测试了多层感知器(MLP)模型。在评估的MLP配置中,选择了拓扑13-7-6。通过将模拟值与观察值进行比较来完成模型的验证。还将该模型的结果与工业来源复杂短期扩散模型(ISCST3)进行了比较。用于评估拟合的四个统计工具是均方误差(MSE),分数偏差(FB),一致性指数(IA)和线性相关系数(R)。比较结果可以看出,在一些行政区,预测值更好,而在其他行政区,则被高估了。此外,人工神经网络模型的预测结果优于ISCST3离散模型。

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