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Modelling dye removal by adsorption onto water treatment residuals using combined response surface methodology-artificial neural network approach

机译:使用组合响应曲面方法-人工神经网络方法模拟吸附到水处理残渣上的染料去除

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摘要

In this study, response surface methodology (RSM)-artificial neural network (ANN) approach was used to optimise/model disperse dye removal by adsorption using water treatment residuals (WTR). RSM was first applied to evaluate the process using three controllable operating parameters, namely WTR dose, initial pH (pH(initial)) and dye concentration, and optimal conditions for colour removal were determined. In the second step, the experimental results of the design data of RSM were used to train the neural network along with a non-controllable parameter, the final pH (PHfinal). The trained neural networks were used for predicting the colour removal. A colour removal of 52.6 +/- 2.0% obtained experimentally at optimised conditions (pH(initial) 3.0, adsorbent dose 30 g/L and dye concentration 75 mg/L) was comparable to 52.0% and 52.2% predicted by RSM and RSM-ANN, respectively. This study thus shows that optimising/predicting the colour removal process using the RSM-ANN approach is possible, and it also indicates that adsorption onto WTR could be used as a primary treatment for removal of colour from dye wastewater.
机译:在这项研究中,使用响应表面方法(RSM)-人工神经网络(ANN)方法通过使用水处理残留物(WTR)进行吸附来优化/模型化分散染料的去除。首先使用RSM使用三个可控制的操作参数(即WTR剂量,初始pH(pH(初始))和染料浓度)来评估工艺,并确定最佳的脱色条件。第二步,将RSM设计数据的实验结果用于训练神经网络以及不可控制的参数,即最终pH(PHfinal)。训练有素的神经网络用于预测颜色去除。在最佳条件下(pH(初始)3.0,吸附剂剂量为30 g / L,染料浓度为75 mg / L)通过实验获得的52.6 +/- 2.0%的脱色率分别相当于RSM和RSM-预测的52.0%和52.2%人工神经网络。因此,这项研究表明,使用RSM-ANN方法优化/预测脱色过程是可行的,并且还表明吸附在WTR上可以用作从染料废水中脱色的主要处理方法。

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