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A Wavelet-based Neural Network Model to Predict Ambient Air Pollutants' Concentration

机译:基于小波神经网络模型的环境空气污染物浓度预测

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The present paper proposes a wavelet based recurrent neural network model to forecast one step ahead hourly, daily mean and daily maximum concentrations of ambient CO, NO_2, NO, O_3, SO_2 and PM_(2.5) -the most prevalent air pollutants in urban atmosphere. The time series of each air pollutant has been decomposed into different time-scale components using maximum overlap wavelet transform (MODWT). These time-scale components were made to pass through Elman network. The number of nodes in the network was decided on the basis of the strength (power) of the corresponding input signals. The wavelet network model was then used to obtain one-step ahead forecasts for a period extending from January 2009 to June 2010. The model results for out of sample forecast are reasonably good in terms of model performance parameters such as mean absolute error (MAE), mean absolute percentage error (MAPE), root mean square error (RMSE), normalized mean absolute error (NMSE), index of agreement (IOA) and standard average error (SAE). The MAPE values for daily maximum concentrations of CO, NO_2, NO, O_3, SO_2 and PM2.5 were found to be 9.5%, 17.37%, 21.20%, 13.79%, 17.77% and 11.94%, respectively, at ITO, Delhi, India. Bearing in mind that the forecasts are for daily maximum concentrations tested over a long validation period, the forecast performance of the model may be considered as reasonably good. The model results demonstrate that a judicious selection of wavelet network design may be employed successfully for air quality forecasting.
机译:本文提出了一种基于小波的递归神经网络模型,预测城市大气中最普遍的空气污染物CO,NO_2,NO,O_3,SO_2和PM_(2.5)的每小时,每日平均和每日最大浓度提前一步。使用最大重叠小波变换(MODWT),已将每种空气污染物的时间序列分解为不同的时间尺度分量。这些时标组件是通过Elman网络传递的。网络中节点的数量是根据相应输入信号的强度(功率)决定的。然后,使用小波网络模型获得从2009年1月到2010年6月的单步提前预测。对于样本外预测,模型结果在模型性能参数(例如平均绝对误差(MAE))方面相当不错,平均绝对百分比误差(MAPE),均方根误差(RMSE),归一化平均绝对误差(NMSE),一致性指数(IOA)和标准平均误差(SAE)。在德里,ITO,每日最高浓度的CO,NO_2,NO,O_3,SO_2和PM2.5的MAPE值分别为9.5%,17.37%,21.20%,13.79%,17.77%和11.94%。印度。记住预测是针对在较长验证期内测试的每日最大浓度的,因此该模型的预测性能可以认为是相当不错的。模型结果表明,小波网络设计的明智选择可以成功地用于空气质量预测。

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