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Water quality forecast based on BP-artificial neural network model in Qiantang River

机译:基于Qiantang河的BP-人工神经网络模型的水质预测

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This study aims at providing a back propagation-artificial neural network (BP-ANN) model on forecasting the water quality change trend of Qiantang River basin. To achieve this goal, a three-layer (one input layer, one hidden layer, and one output layer) BP-ANN with the LM regularization training algorithm was used. Water quality variables such as pH value, dissolved oxygen, permanganate index and ammonia-nitrogen was selected as the input data to obtain the output of the neural network. The ANN structure with 17 hidden neurons obtained the best selection. The comparison between the original measured and forecast values of the ANN model shows that the relative errors, with a few exceptions, were lower than 9%. The results indicated that the BP neural network can be satisfactorily applied to forecast precise water quality parameters and is suitable for pre-alarm of water quality trend.
机译:本研究旨在提供反向传播 - 人工神经网络(BP-ANN)模型预测钱塘河流域水质变化趋势。为了实现这一目标,使用具有LM正则化训练算法的三层(一个输入层,一个隐藏层和一个输出层)BP-ANN。选择水质变量,如pH值,溶解氧,高锰酸盐指数和氨 - 氮作为输入数据,以获得神经网络的输出。 ANN结构17个隐形神经元获得了最佳选择。 ANN模型的原始测量和预测值之间的比较显示,具有少数例外的相对误差低于9%。结果表明,BP神经网络可以令人满意地应用于预测精确的水质参数,适用于水质趋势的报警。

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