State Key Laboratory of Urban Water Resource and Environment, School of Municipal and Environmental Engineering, Harbin Institute of Technology, 73 Huanghe Road, Harbin 150090, PR China.
State Key Laboratory of Urban Water Resource and Environment, School of Municipal and Environmental Engineering, Harbin Institute of Technology, 73 Huanghe Road, Harbin 150090, PR China.
Bioresour Technol. 2017 Mar;228:106-115. doi: 10.1016/j.biortech.2016.12.045. Epub 2016 Dec 16.
Three-layered feedforward backpropagation (BP) artificial neural networks (ANN) and multiple nonlinear regression (MnLR) models were developed to estimate biogas and methane yield in an upflow anaerobic sludge blanket (UASB) reactor treating potato starch processing wastewater (PSPW). Anaerobic process parameters were optimized to identify their importance on methanation. pH, total chemical oxygen demand, ammonium, alkalinity, total Kjeldahl nitrogen, total phosphorus, volatile fatty acids and hydraulic retention time selected based on principal component analysis were used as input variables, whiles biogas and methane yield were employed as target variables. Quasi-Newton method and conjugate gradient backpropagation algorithms were best among eleven training algorithms. Coefficient of determination (R) of the BP-ANN reached 98.72% and 97.93% whiles MnLR model attained 93.9% and 91.08% for biogas and methane yield, respectively. Compared with the MnLR model, BP-ANN model demonstrated significant performance, suggesting possible control of the anaerobic digestion process with the BP-ANN model.
三层前馈反向传播 (BP) 人工神经网络 (ANN) 和多个非线性回归 (MnLR) 模型被开发出来,以估计处理马铃薯淀粉加工废水 (PSPW) 的上流式厌氧污泥床 (UASB) 反应器中的沼气和甲烷产量。优化了厌氧工艺参数,以确定它们对甲烷化的重要性。基于主成分分析选择 pH 值、总化学需氧量、铵、碱度、总凯氏氮、总磷、挥发性脂肪酸和水力停留时间作为输入变量,而沼气和甲烷产量则作为目标变量。在十一种训练算法中,拟牛顿法和共轭梯度反向传播算法是最佳的。BP-ANN 的决定系数 (R) 分别达到 98.72%和 97.93%,而 MnLR 模型分别达到 93.9%和 91.08%,用于沼气和甲烷产量。与 MnLR 模型相比,BP-ANN 模型表现出显著的性能,表明可能通过 BP-ANN 模型对厌氧消化过程进行控制。