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Application of Factor Analysis in a Large-Scale Industrial Wastewater Treatment Plant Simulation Using Principal Component Analysis-Artificial Neural Network Hybrid Approach (Case Study: Fajr Industrial Wastewater Treatment Plant, Mahshahr, Iran)

机译:主成分分析-人工神经网络混合法在因子分析在大型工业废水处理厂模拟中的应用(案例研究:伊朗马哈尔的Fajr工业废水处理厂)

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摘要

The effective operation of industrial wastewater treatment plants is quite complicated due to having diverse qualitative and quantitative variations in their effluent characteristics during a day. In this article, we take full advantages of well-known prediction models to acquire an applicable and constructive operation over industrial treatment plants. We combine multilayer perceptron feed forward neural networks with Levenberg-Marquardt training function (Trainlm) and principal component analysis method to estimate pH, chemical oxygen demand, total dissolved solid, Cl~-, turbidity, and achieve appropriate operation of Fajr petrochemical industrial treatment plant for the first time in Iran. Moreover, factor analysis approach was applied to determine the paramount input parameters of the models to reduce the parameters' dimension. Mean square error, root mean square error, and correlation coefficient (R) were used for evaluating the performance of the models. Results indicate that correlation coefficients (R) in the range of 0.8-0.94 showed excellent accuracy of the models in estimating qualitative profile of wastewater. Simulation of a whole treatment plant, better prediction of parameters, and proposing a new hybrid model could be some advantages of this study.
机译:工业废水处理厂的有效运行非常复杂,这是由于一天中的废水特性在质和量方面存在多种多样的变化。在本文中,我们将充分利用众所周知的预测模型的优势,以在工业处理厂上获得适用的建设性操作。我们将多层感知器前馈神经网络与Levenberg-Marquardt训练函数(Trainlm)和主成分分析方法相结合,以估计pH,化学需氧量,总溶解固体,Cl〜-,浊度,并实现Fajr石化工业处理厂的适当运行第一次在伊朗。此外,采用因子分析方法来确定模型的最重要输入参数,以减小参数的维数。均方误差,均方根误差和相关系数(R)用于评估模型的性能。结果表明,相关系数(R)在0.8-0.94的范围内表明该模型在估计废水的定性曲线方面具有极好的准确性。整个处理厂的模拟,更好的参数预测以及提出新的混合模型可能是这项研究的优势。

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