Environment Research Center, Research Institute for Primordial Prevention of Non-communicable Disease, Isfahan University of Medical Sciences, Isfahan, Iran; Department of Environmental Health Engineering, School of Health, Isfahan University of Medical Sciences, Isfahan, Iran.
Environment Research Center, Research Institute for Primordial Prevention of Non-communicable Disease, Isfahan University of Medical Sciences, Isfahan, Iran; Department of Environmental Health Engineering, School of Health, Isfahan University of Medical Sciences, Isfahan, Iran.
J Environ Manage. 2021 Aug 15;292:112759. doi: 10.1016/j.jenvman.2021.112759. Epub 2021 May 11.
The complex nature of wastewater treatment has led to search for alternative strategies such as different artificial intelligence (AI) techniques to model the various operational parameters. The present work is aimed at predicting the transmembrane pressure (TMP) as a key operational parameter in the case of anaerobic membrane bioreactor-sequencing batch reactor (AnMBR-SBR) during biohydrogen production using the adaptive neuro-fuzzy inference systems (ANFIS) and artificial neural network (ANN). In both the models, organic loading rates (OLR) ranging from 0.5 to 8.0 g COD/L/d, effluent pH (3.6-6.9), mixed liquor suspended solid (4.6-21.5 g/L) and mixed liquor volatile suspended solid (3.7-15.5 g/L) were used as the input parameters to test TMP as an output parameter. The ANFIS model was trained using the hybrid algorithms for TMP prediction. The higher prediction performance was obtained by using the Gauss membership function with four membership numbers. A back-propagation algorithm was also employed for the feed forward training of ANN model; the best structure was a Levenberg-Marquardt training algorithm with nine neurons in the hidden layer. By employing ANFIS and ANN models, relatively a good prediction of TMP was obtained with the R values of 0.93 and 0.88, respectively while the calculated mean square error for TMP in the ANFIS model (7.3 × 10) was lower than that of ANN model (8.02 × 10). The higher R and lower MSE values for the ANFIS model exhibited a better TMP prediction performance than the ANN model. Finally, it was observed that in the sensitivity analysis of ANN model, OLR was the most important input parameter on the variation of TMP.
污水处理的复杂性导致人们寻求替代策略,例如使用不同的人工智能 (AI) 技术来模拟各种操作参数。本工作旨在使用自适应神经模糊推理系统 (ANFIS) 和人工神经网络 (ANN) 预测厌氧膜生物反应器-序批式反应器 (AnMBR-SBR) 中生物制氢过程中的关键操作参数跨膜压力 (TMP)。在这两种模型中,有机负荷率 (OLR) 范围为 0.5 至 8.0 g COD/L/d,出水 pH 值 (3.6-6.9),混合液悬浮固体 (4.6-21.5 g/L) 和混合液挥发性悬浮固体 (3.7-15.5 g/L) 用作输入参数,以测试 TMP 作为输出参数。ANFIS 模型使用混合算法进行 TMP 预测。使用具有四个隶属度函数的高斯隶属度函数获得了更高的预测性能。反向传播算法也用于 ANN 模型的前馈训练;最佳结构是具有九个神经元的 Levenberg-Marquardt 训练算法。通过使用 ANFIS 和 ANN 模型,分别获得了相对较好的 TMP 预测,R 值分别为 0.93 和 0.88,而在 ANFIS 模型中 TMP 的计算均方误差 (7.3×10) 低于 ANN 模型 (8.02×10)。ANFIS 模型的 R 值较高,MSE 值较低,表明其 TMP 预测性能优于 ANN 模型。最后,在 ANN 模型的敏感性分析中观察到,OLR 是对 TMP 变化影响最大的输入参数。