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Prediction and quantifying parameter importance in simultaneous anaerobic sulfide and nitrate removal process using artificial neural network

机译:人工神经网络预测厌氧硫化物和硝酸盐同时去除过程中参数重要性的预测和量化

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The present investigation deals with the prediction of the performance of simultaneous anaerobic sulfide and nitrate removal in an upflow anaerobic sludge bed (UASB) reactor through an artificial neural network (ANN). Influent sulfide concentration, influent nitrate concentration, S/N mole ratio, pH, and hydraulic retention time (HRT) for 144 days' steady-state condition were the inputs of the model; whereas output parameters were sulfide removal percentage, nitrate removal percentage, sulfate production percentage, and nitrogen production percentage. The prediction performance was evaluated by calculating root mean square error (RMSE), mean absolute error (MAE), mean absolute relative error (MARE), and determination coefficient (R (2)) values. Generally, the ANN model exhibited good prediction of the simultaneous sulfide and nitrate removal process. The effect of five input parameters to the performance of the reactor was quantified and compared using the connection weights method, Garson's algorithm method, and partial derivatives (PaD) method. The results showed that HRT markedly affects the performance of the reactor.
机译:本研究涉及通过人工神经网络(ANN)在上流厌氧污泥床(UASB)反应器中同时去除厌氧性硫化物和硝酸盐的性能的预测。该模型输入了144天稳态条件下的进水硫化物浓度,进水硝酸盐浓度,信噪比,pH和水力停留时间(HRT)。输出参数为硫化物去除率,硝酸盐去除率,硫酸盐生成率和氮生成率。通过计算均方根误差(RMSE),平均绝对误差(MAE),平均绝对相对误差(MARE)和确定系数(R(2))值来评估预测性能。通常,ANN模型对同时去除硫化物和硝酸盐的过程表现出良好的预测。使用连接权重方法,Garson算法和偏导数(PaD)方法,量化并比较了五个输入参数对反应堆性能的影响。结果表明,HRT显着影响反应堆的性能。

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