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Application Of Artificial Neural Networks To Estimate Wastewater Treatment Plant Inlet Biochemical Oxygen Demand

机译:人工神经网络在污水处理厂进水口生化需氧量估算中的应用

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Biochemical oxygen demand (BOD) has been shown to be an important variable in water quality management and planning. However, BOD is difficult to measure and needs longer time periods (5 days) to get results. Artificial neural networks (ANNs) are being used increasingly to predict and forecast water resource variables. The objective of this research was to develop an ANNs model to estimate daily BOD in the inlet of wastewater biochemical treatment plants. The plantscale data set (364 daily records of the year 2005) was obtained from a local wastewater treatment plant. Various combinations of daily water quality data, namely chemical oxygen demand (COD), water discharge (Q_w), suspended solid (SS), total nitrogen (N), and total phosphorus (P) are used as inputs into the ANN so as to evaluate the degree of effect of each of these variables on the daily inlet BOD. The results of the ANN model are compared with the multiple linear regression model (MLR). Mean square error, average absolute relative error, and coefficient of determination statistics are used as comparison criteria for the evaluation of the model performance. The ANN technique whose inputsrnare COD, Q_w, SS, N, and P gave mean square errors of 708.01, average absolute relative errors of 10.03%, and a coefficient of determination 0.919, respectively. On the basis of the comparisons, it was found that the ANN model could be employed successfully in estimating the daily BOD in the inlet of wastewater biochemical treatment plants.
机译:生化需氧量(BOD)已被证明是水质管理和规划中的重要变量。但是,BOD难以衡量,需要更长的时间(5天)才能获得结果。人工神经网络(ANN)越来越多地用于预测和预测水资源变量。这项研究的目的是建立一个ANNs模型来估算废水生化处理厂进水口的每日BOD。工厂规模的数据集(2005年的364条每日记录)是从当地的废水处理厂获得的。每日水质数据的各种组合,即化学需氧量(COD),排水量(Q_w),悬浮固体(SS),总氮(N)和总磷(P)被用作ANN的输入,以便评估每个变量对每日进口BOD的影响程度。将ANN模型的结果与多元线性回归模型(MLR)进行比较。均方误差,平均绝对相对误差和确定系数统计量用作评估模型性能的比较标准。输入为COD,Q_w,SS,N和P的ANN技术的均方误差为708.01,平均绝对相对误差为10.03%,确定系数为0.919。在比较的基础上,发现可以将ANN模型成功地用于估算废水生化处理厂进水口的每日BOD。

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