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3
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Chromate removal by an iron sorbent: mechanism and modeling.铁吸附剂去除铬酸盐:机理与建模
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6
Fixed-bed study for lanthanide (La, Eu, Yb) ions removal from aqueous solutions by immobilized Pseudomonas aeruginosa: experimental data and modelization.固定床研究:通过固定化铜绿假单胞菌从水溶液中去除镧系元素(La、Eu、Yb)离子:实验数据与建模
Chemosphere. 2002 Apr;47(3):333-42. doi: 10.1016/s0045-6535(01)00244-2.

用于预测深度水处理出水的平流扩散模型与神经网络的比较

Comparison of Advection-Diffusion Models and Neural Networks for Prediction of Advanced Water Treatment Effluent.

作者信息

Mortula Mohammed Maruf, Abdalla Jamal, Ghadban Ahmad A

机构信息

Department of Civil Engineering, American University of Sharjah , Sharjah, United Arab Emirates .

出版信息

Environ Eng Sci. 2012 Jul;29(7):660-668. doi: 10.1089/ees.2011.0246.

DOI:10.1089/ees.2011.0246
PMID:22783063
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3386006/
Abstract

An artificial neural network (ANN) can help in the prediction of advanced water treatment effluent and thus facilitate design practices. In this study, sets of 225 experimental data were obtained from a wastewater treatment process for the removal of phosphorus using oven-dried alum residuals in fixed-bed adsorbers. Five input variables (pH, initial phosphorus concentration, wastewater flow rate, porosity, and time) were used to test the efficiency of phosphorus removal at different times, and ANNs were then used to predict the effluent phosphorus concentration. Results of experiments that were conducted for different values of the input parameters made up the data used to train and test a multilayer perceptron using the back-propagation algorithm of the ANN. Values predicted by the ANN and the experimentally measured values were compared, and the accuracy of the ANN was evaluated. When ANN results were compared to the experimental results, it was concluded that the ANN results were accurate, especially during conditions of high phosphorus concentration. While the ANN model was able to predict the breakthrough point with good accuracy, the conventional advection-diffusion equation was not as accurate. A parametric study conducted to examine the effect of the initial pH and initial phosphorus concentration on the effluent phosphorus concentration at different times showed that lower influent pH values are the most suitable for this advanced treatment system.

摘要

人工神经网络(ANN)有助于预测深度水处理出水,从而促进设计实践。在本研究中,从一个使用烘干的明矾残渣在固定床吸附器中去除磷的废水处理过程中获得了225组实验数据。使用五个输入变量(pH值、初始磷浓度、废水流速、孔隙率和时间)来测试不同时间的除磷效率,然后使用人工神经网络预测出水磷浓度。针对不同输入参数值进行的实验结果构成了用于使用人工神经网络的反向传播算法训练和测试多层感知器的数据。比较了人工神经网络预测值和实验测量值,并评估了人工神经网络的准确性。将人工神经网络的结果与实验结果进行比较时,得出的结论是人工神经网络的结果是准确的,尤其是在高磷浓度条件下。虽然人工神经网络模型能够较为准确地预测穿透点,但传统的对流扩散方程则没那么准确。一项参数研究考察了初始pH值和初始磷浓度在不同时间对出水磷浓度的影响,结果表明较低的进水pH值最适合这种深度处理系统。