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Novel performance prediction model of a biofilm system treating domestic wastewater based on stacked denoising auto-encoders deep learning network

机译:基于堆积的自动编码深度学习网络的生物膜系统的新型生物膜系统性能预测模型

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Stacked denoising auto-encoders (SDAE) deep learning network was used to predict the performance of a two-stage biofilm system, which was constructed based on traditional anaerobic/oxic process. Eight input variables were adopted for performance predicting, including concentrations of chemical oxygen demand (COD), ammonia (NH4(+)-N) and total nitrogen (TN) of biofilm system influent, concentrations of COD, NH4(+)-N and TN of anoxic biofilm reactor effluent, influent flow and reflux ratio of biofilm system. While concentrations of COD, NH4(+) -N and TN of biofilm system effluent were employed as output variables for COD, NH4(+)-N and TN prediction model, respectively. Root mean square error, mean absolute error, mean relative error and residuals were adopted for evaluating the fitness of the SDAE deep learning network model. Backpropagation neural network, support vector regression, extreme learning machine, gradient boosting decision tree and stacked auto-encoders were adopted for comparison to further demonstrate the effectiveness of the proposed method. Compared with the five contrast models, SDAE deep learning network model showed the best results, suggesting the possible application of performance prediction of the biofilm process with SDAE deep learning network model.
机译:堆叠的去噪自动编码器(SDAE)深度学习网络用于预测两级生物膜系统的性能,该系统是基于传统的厌氧/氧化过程构建的。采用八种输入变量进行性能预测,包括化学需氧量(COD),氨(NH4(+) - N)和生物膜系统的总氮(TN)的浓度,COD浓度,NH4(+) - N和缺氧生物膜反应器流出物,生物膜系统的流水流动和回流率。虽然COD的浓度,NH 4(+)-N和生物膜系统流出物的TN分别用于COD,NH4(+) - N和TN预测模型的输出变量。根均方误差,平均绝对误差,采用平均相对误差和残差来评估SDAE深度学习网络模型的适应性。 Backpropagation神经网络,支持向量回归,极端学习机,梯度提升决策树和堆叠的自动编码器被采用比较,以进一步证明所提出的方法的有效性。与五个对比模型相比,SDAE深度学习网络模型显示出最佳效果,表明在SDAE深度学习网络模型中可能对生物膜过程的性能预测应用。

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