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Prediction of Biochemical Oxygen Demand in a Wastewater Treatment Plant by Artificial Neural Networks

机译:人工神经网络预测污水处理厂生化需氧量。

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In this study, output biochemical oxygen demand concentration of Kayseri advanced biological wastewater treatment plant was defined with the daily input data of 2004-2007 belonging to the same facility and this data was estimated rapidly and confidently by training with multi layered artificial neural networks model. In the establishment of the artificial neural networks model temperature, total nitrogen, total phosphorus, suspended solids, chemical oxygen demand and total dissolved solids parameters were used as input while biochemical oxygen demand parameter was used as output. The structure yielding the best result was obtained by training the artificial neural networks structure with 5 inputs, two hidden layers by Levenberg-Marquardt algorithm. In this structure, it was found that mean square error 0.45, mean absolute error 0.445 and R~2 = 0.915.
机译:在这项研究中,开塞利先进的生物废水处理厂的生化需氧量浓度是根据属于同一设施的2004-2007年的每日输入数据定义的,并通过多层人工神经网络模型的训练快速而自信地估计了这些数据。在建立温度,温度,总氮,总磷,悬浮固体,化学需氧量和总溶解固体参数的人工神经网络模型时,将生化需氧量参数作为输出。通过用Levenberg-Marquardt算法训练具有5个输入,两个隐藏层的人工神经网络结构来获得效果最好的结构。在这种结构中,发现均方误差为0.45,平均绝对误差为0.445,R〜2 = 0.915。

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