巴格达AL-Rustumiya污水处理厂的人工神经网络建模

Dalia H. aldahy, Mohammed A. Ibrahim
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摘要

在本研究中,人工神经网络(ann)被开发用于模拟伊拉克巴格达Al-Rustamiya污水处理厂的性能。建立了两个模型,输出BOD去除率和COD参数。建模选择了四个主要输入参数,即总悬浮固体(TSS)、总溶解固体(TDS)、氯离子(Cl-)和ph。收集了2011年至2021年期间巴格达市长区(Mayoralty)的进水和出水浓度。结果表明,人工神经网络模型能够准确预测BOD和COD的去除,并且在隐含层的13个神经元上获得了最优拓扑结构,分别为3.09、0.96和4.28 MSE, BOD和COD的R分别为0.96。
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Artificial Neural Networks Modelling For AL-Rustumiya Wastwater Treatment Plant in Baghdad
In the present research, Artificial Neural Networks (ANNs) were developed for modelling the performance of Al-Rustamiya wastewater treatment plant, Baghdad, Iraq. There were created two models and the outputs were the removal efficiency of BOD and COD parameters. Four main input parameters were selected for modelling, namely Total suspended solids (TSS), Total dissolved solids (TDS), chloride ion (Cl-), and pH. Influent and effluent concentrations of the parameters were collected from Mayoralty of Baghdad for the period from 2011 to 2021. The results of the modelling were in terms of mean square error (MSE) and correlation coefficient (R). The results indicated that the ANNs models were accurately able to predict the removal of the BOD, and COD, and the optimum topology of the ANNs is obtained at 13 neurons in the hidden layer for both with 3.09 MSE, 0.96 and 4.28 MSE, 0.96 R for BOD and COD respectively.
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