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首页> 外文期刊>Biochemical Engineering Journal >Modeling and sensitivity analysis of the alkylphenols removal via moving bed biofilm reactor using artificial neural networks: Comparison of levenberg marquardt and particle swarm optimization training algorithms
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Modeling and sensitivity analysis of the alkylphenols removal via moving bed biofilm reactor using artificial neural networks: Comparison of levenberg marquardt and particle swarm optimization training algorithms

机译:使用人工神经网络通过移动床生物膜反应器去除烷基酚的建模与敏感性分析:Levenberg Marquardt与粒子群优化训练算法的比较

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摘要

Alkylphenols (APs) are nonionic surfactants with toxic and estrogenic properties. APs from municipal and industrial wastewater are frequently detected in surface waters. Therefore, a broadly accepted method for the treatment of APs is needed. The moving-bed bioreactor (MBBR) is an effective process for micropollutant elimination. In this study, the modeling of 4-nonylphenol (4-NP) and 4-tert-octylphenol (44-OP) removal from synthetic wastewater using MBBR was performed. Also, a comparison was made between the multilayer perceptron artificial neural network (MLPNN) trained with the traditional Levenberg Marquardt (LM) and the particle swarm optimization (PSO) algorithms. The performance of MBBR in removing chemical oxygen demand (COD) and APs was predicted using the COD surface area loading rate (SALR), COD volumetric loading rate (VLR), hydraulic retention time (HRT), and the initial concentration of APs. The results showed that the best transfer functions are Tan-sigmoid in the hidden layer and Purelin in the output layer. The number of optimal neurons was 5:9:3 for LM and 5:11:3 for PSO. Moreover, the network trained with PSO algorithm was slightly more predictive (R = 0.9997 MSE = 2.526e-5, MAE = 0.0041) than the traditional LM algorithm (R = 0.9989, MSE = 2.582e-5, MAE = 0.0043), especially by increasing the number of neurons. Finally, a sensitivity analysis was performed using ANN-PSO and Pearson correlation, and the results were completely compatible.
机译:烷基酚(APS)是具有毒性和雌激素性质的非离子表面活性剂。从城市和工业废水中的APS经常在地表水域中检测到。因此,需要一种用于治疗APS的广泛接受的方法。移动床生物反应器(MBBR)是微核性消除的有效方法。在该研究中,进行了使用MBBR从合成废水中除去4-壬基酚(4-NP)和4-叔辛基苯酚(44-OP)的建模。此外,使用传统的Levenberg Marquardt(LM)和粒子群优化(PSO)算法训练的多层感知人工神经网络(MLPNN)之间进行了比较。使用COD表面积加载速率(SALR),COD体积加载速率(VLR),液压保留时间(HRT)和AP的初始浓度来预测MBBR在去除化学需氧量(COD)和APS时的性能。结果表明,最佳的转移功能是在输出层中隐藏层和purelin中的棕褐色。 LM的最佳神经元数为5:9:3,PSO为5:11:3。此外,使用PSO算法训练的网络比传统的LM算法(R = 0.9989,MSE = 2.582E-5,MAE = 0.0043)略高于预测性(r = 0.9997mse = 2.526e-5,mae = 0.0041),尤其是通过增加神经元的数量。最后,使用Ann-PSO和Pearson相关进行敏感性分析,结果完全相容。

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