Prediction of dissolved oxygen in urban rivers at the Three Gorges Reservoir, China: extreme learning machines (ELM) versus artificial neural network (ANN)

IF 2.4 4区 环境科学与生态学 Q2 WATER RESOURCES Water Quality Research Journal Pub Date : 2020-02-01 DOI:10.2166/WQRJ.2019.053
Senlin Zhu, S. Heddam
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引用次数: 56

Abstract

In the present study, two non-linear mathematical modelling approaches, namely, extreme learning machine (ELM) and multilayer perceptron neural network (MLPNN) were developed to predict daily dissolved oxygen (DO) concentrations. Water quality data from four urban rivers in the backwater zone of the Three Gorges Reservoir, China were used. The water quality data selected consisted of daily observed water temperature, pH, permanganate index, ammonia nitrogen, electrical conductivity, chemical oxygen demand, total nitrogen, total phosphorus and DO. The accuracy of the ELM model was compared with the standard MLPNN using several error statistics such as root mean squared error, mean absolute error, the coefficient of correlation and the Willmott index of agreement. Results showed that the ELM and MLPNN models perform well for the Wubu River, acceptably for the Yipin River and moderately for the Huaxi River, while poor model performance was obtained at the Tributary of Huaxi River. Model performance is negatively correlated with pollution level in each river. The MLPNN model slightly outperforms the ELM model in DO prediction. Overall, it can be concluded that MLPNN and ELM models can be applied for DO prediction in low-impacted rivers, while they may not be appropriate for DO modelling for highly polluted rivers. This article has been made Open Access thanks to the kind support of CAWQ/ACQE (https://www.cawq.ca).
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三峡库区城市河流溶解氧预测:极限学习机与人工神经网络的对比
在本研究中,开发了两种非线性数学建模方法,即极限学习机(ELM)和多层感知器神经网络(MLPNN)来预测每日溶解氧(DO)浓度。使用了中国三峡水库回水区四条城市河流的水质数据。所选的水质数据包括每日观测的水温、pH、高锰酸盐指数、氨氮、电导率、化学需氧量、总氮、总磷和DO。使用均方根误差、平均绝对误差、,相关系数和Willmott一致性指数。结果表明,ELM和MLPNN模型在乌布河表现良好,在一品河表现尚可,在花溪河表现中等,而在花溪支流表现较差。模型性能与每条河流的污染水平呈负相关。MLPNN模型在DO预测方面略优于ELM模型。总体而言,可以得出结论,MLPNN和ELM模型可以应用于低影响河流的DO预测,而它们可能不适用于高污染河流的DO建模。由于CAWQ/ACQE的大力支持,本文已被开放获取(https://www.cawq.ca)。
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4.50
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8.70%
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