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Comparison of static MLP and dynamic NARX neural networks for forecasting of atmospheric PM_(10) and SO_2 concentrations in an industrial site of Turkey

机译:静态MLP和动态鼻腔神经网络预测土耳其工业部位大气PM_(10)和SO_2浓度的预测

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摘要

This study aims to compare performances of two static and one dynamic neural networks used for prediction of hourly ambient air quality concentrations in an industrial site of Turkey. Two air pollutants (PM(10)and SO2) and three meteorological parameters (ambient air temperature, relative humidity, and wind speed) were used as input variables. The predictions of the dynamic nonlinear autoregressive exogenous (NARX) model were compared with the predictions of the static multilayer perceptron (MLP) neural network model. The results showed that the predictions of the NARX neural network were obviously better than the predictions of MLP networks. The coefficient of determination (R-2), index of agreement and efficiency between the observed and predicted air pollutant concentrations by the NARX model were 0.9773, 0.994, and 0.977 for PM10, respectively while the same parameters were 0.9984, approximate to 1, and approximate to 1 for SO2. The MBEs (mean bias errors) were also approximately zero for both pollutants that indicate the adequacy of the model. The values of RMSE (root mean squared error) were also fractional as 0.0191 and 0.0087 for both pollutants. The NARX model predicted SO(2)concentrations better than PM(10)concentrations. In comparison with MLP network structures, NARX network exhibits faster convergence. The model suggested in this study could be used to support and improve air quality management practices.
机译:本研究旨在比较两个静态和一个动态神经网络的性能,用于预测土耳其工业部位的每小时环境空气质量浓度。两个空气污染物(PM(10)和SO2)和三个气象参数(环境空气温度,相对湿度和风速)用作输入变量。将动态非线性自回转性外源性(NARX)模型的预测与静态多层的Perceptron(MLP)神经网络模型的预测进行了比较。结果表明,NARX神经网络的预测显着优于MLP网络的预测。 NARX模型的测定系数(R-2),观察和预测空气污染物浓度之间的协议指数和效率分别为PM10的0.9773,0.994和0.977,而相同的参数为0.9984,近似为1,对于SO2近似为1。对于表示模型充分性的污染物,MBES(平均偏差误差)也大约为零。对于污染物,RMSE(根均方误差)的值也为0.0191和0.0087。 NARX模型预测(2)浓度优于PM(10)浓度。与MLP网络结构相比,NARX网络表现出更快的收敛。本研究建议的模型可用于支持和改善空气质量管理实践。

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