首页> 外文会议>2019 IEEE 7th Palestinian International Conference on Electrical and Computer Engineering >Artificial Neural Network Approach for Modeling of Cr (VI) Adsorption from Waste Water by Lewatit MP64 and Dowex 1×8
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Artificial Neural Network Approach for Modeling of Cr (VI) Adsorption from Waste Water by Lewatit MP64 and Dowex 1×8

机译:人工神经网络方法模拟Lewatit MP64和Dowex 1×8吸附废水中的Cr(VI)

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In this study, an artificial neural network model was developed to estimate the removal efficiency of Cr (VI) ion from waste water by Lewatit MP64 and Dowex 1×8 resins. For this purpose, 36 experimental data obtained in a laboratory batch study. In the developed model, contact time, adsorbent dosage, pH and concentration were used as the input parameters, and removal efficiency for Lewatit MP64 and Dowex 1×8 were also used as output parameters. The model performances were determined by the mean square error and the coefficient of determination. The model using the Levenberg-Marquardt backpropagation algorithm (TrainLM) was found the best prediction. This model also has a hidden layer and 15 neurons (4-15-1). The coefficient of determination between experimental and estimates was found to be 0.99 removal efficiency for Lewatit MP64 and 0.92 for Dowex 1×8. The results show that removal efficiency can be predicted successfully with artificial neural networks.
机译:在这项研究中,建立了一个人工神经网络模型来评估Lewatit MP64和Dowex 1×8树脂从废水中去除Cr(VI)离子的效率。为此,在实验室批量研究中获得了36个实验数据。在开发的模型中,将接触时间,吸附剂剂量,pH和浓度用作输入参数,并将Lewatit MP64和Dowex 1×8的去除效率用作输出参数。模型的性能由均方误差和确定系数确定。发现使用Levenberg-Marquardt反向传播算法(TrainLM)的模型是最佳预测。该模型还具有一个隐藏层和15个神经元(4-15-1)。发现实验值与估计值之间的确定系数是Lewatit MP64的0.99去除效率和Dowex 1×8的0.92去除效率。结果表明,利用人工神经网络可以成功地预测去除效率。

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