The prediction of atmospheric concentrations of toluene using artificial neural network methods in Tehran

G. Asadollahfardi, Shiva Homayoun Aria, M. Mehdinejad
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引用次数: 1

Abstract

In recent years, raising air pollutants has become as a big concern, especially in metropolitan cities such as Tehran. Therefore, forecasting the level of pollutants plays a significant role in air quality management. One of the forecasting tools that can be used is an artificial neural network which is able to model the complicated process of air pollution. In this study, we applied two different methods of artificial neural networks, the Multilayer Perceptron (MLP) and Radial Basis Function (RBF), to predict the hourly air concentrations of toluene in Tehran. Hourly temperature, wind speed, humidity and NOx were selected as inputs. Both methods had acceptable results; however, the RBF neural network produced better results. The coefficient of determination (R 2 ) between the observed and predicted data was 0.9642 and 0.99 for MLP and RBF neural networks, respectively. The results of the mean bias errors (MBE) were 0.00 and -0.014 for RBF and MLP, respectively which indicate the adequacy of the models. The index of agreement (IA) between the observed and predicted data was 0.999 and 0.994 in the RBF and the MLP, respectively which indicates the efficiency of the models. Finally, sensitivity analysis related to the MLP neural network determined that temperature was the most significant factor in air concentration of toluene in Tehran which may be due to the volatile nature of toluene.
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利用人工神经网络方法预测德黑兰大气中甲苯的浓度
近年来,空气污染物的增加已经成为一个大问题,尤其是在德黑兰这样的大都市。因此,污染物水平预测在空气质量管理中起着重要的作用。其中一种可用的预报工具是人工神经网络,它能够模拟空气污染的复杂过程。在这项研究中,我们应用了两种不同的人工神经网络方法,多层感知器(MLP)和径向基函数(RBF),来预测德黑兰每小时空气中甲苯的浓度。每小时温度、风速、湿度和NOx作为输入。两种方法的结果均可接受;然而,RBF神经网络产生更好的结果。MLP和RBF神经网络的观测数据与预测数据的决定系数(r2)分别为0.9642和0.99。RBF和MLP的平均偏置误差(MBE)分别为0.00和-0.014,表明模型的充分性。RBF和MLP的观测数据与预测数据的一致性指数(IA)分别为0.999和0.994,表明模型的有效性。最后,与MLP神经网络相关的敏感性分析确定,温度是德黑兰空气中甲苯浓度的最重要因素,这可能是由于甲苯的挥发性。
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