ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY)

E. Simsek, Taner Alkay
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引用次数: 1

Abstract

A three-layer Artificial Neural Network (ANN) model was employed to develop and estimate the effluent stream parameters of two different wastewater treatment plants (WWTP) in Kocaeli, Turkey. The chemical oxygen demand (COD), suspended solid (SS), pH and temperature as the output parameters were estimated by five input parameters such as flow rate, COD, pH, SS and temperature. The ANN model was developed with 400 data sets for prediction of effluent pH, temperature, COD and SS. The benchmark tests were employed to achieve an optimum network algorithm. The network model with optimum functions at hidden and output layers were applied for the forecasts of effluent streams of both WWTPs. The regression values of training, validation and test using this function were found as 0.94, 0.96 and 0.95, respectively. The optimum neuron numbers were determined according to the minimum mean square error values. ANN testing outputs revealed that the model exhibited well performance in forecasting the effluent pH, temperature, SS and COD values.
人工神经网络方法预测污水处理厂流出流:以土耳其kocaeli为例
采用三层人工神经网络(ANN)模型对土耳其Kocaeli两个不同污水处理厂(WWTP)的出水参数进行了开发和估计。通过流量、COD、pH、SS、温度5个输入参数,估算出化学需氧量(COD)、悬浮物(SS)、pH、温度作为输出参数。利用400个数据集建立了人工神经网络模型,对出水pH、温度、COD和SS进行了预测,并通过基准试验得出了最优的网络算法。将隐层和输出层均具有最优函数的网络模型应用于两个污水处理厂的流出流量预测。使用该函数训练、验证和测试的回归值分别为0.94、0.96和0.95。根据最小均方误差值确定最优神经元数。人工神经网络测试结果表明,该模型在预测出水pH、温度、SS和COD值方面表现良好。
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