序批式反应器生物去除屠宰场废水中有机碳和氮的人工神经网络建模

Pradyut Kundu, A. Debsarkar, S. Mukherjee
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引用次数: 23

摘要

采用不同输入特征样品的实验室规模序批式反应器(SBR)对屠宰场废水进行处理,并对实验结果进行探索,构建前馈反向传播人工神经网络(ANN),预测化学需氧量(COD)和氨氮(NH4+-N)的联合去除效率。进水COD和NH4+-N水平分别为2000±100mg/L和120±10mg /L,反应器在(4 + 4)、(5 + 3)和(5 + 4)3种不同的好氧-缺氧顺序组合下总反应时间为(4 + 4)h。采用神经网络工具,采用Levenberg-Marquardt训练算法进行人工神经网络建模。使用隐藏层中的神经元数量从2到30不等,对三种类型的ANN模型(模型“A”,“B”和“C”)的训练进行了各种试验。三种模型共使用29个数据集,其中15个数据集用于训练,7个数据集用于验证,7个数据集用于测试。实验结果用于三种类型的人工神经网络模型的测试和验证。模型“A”、“B”、“C”3个人工神经网络模型均能较好地预测COD和NH4+-N去除率,实验误差为3.33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Network Modeling for Biological Removal of Organic Carbon and Nitrogen from Slaughterhouse Wastewater in a Sequencing Batch Reactor
The present paper deals with treatment of slaughterhouse wastewater by conducting a laboratory scale sequencing batch reactor (SBR) with different input characterized samples, and the experimental results are explored for the formulation of feedforward backpropagation artificial neural network (ANN) to predict combined removal efficiency of chemical oxygen demand (COD) and ammonia nitrogen (NH4+-N). The reactor was operated under three different combinations of aerobic-anoxic sequence, namely, (4 + 4), (5 + 3), and (5 + 4) hour of total react period with influent COD and NH4+-N level of 2000 ± 100mg/L and 120 ± 10 mg/L, respectively. ANN modeling was carried out using neural network tools, with Levenberg-Marquardt training algorithm. Various trials were examined for training of three types of ANN models (Models "A," "B," and "C") using number of neurons in the hidden layer varying from 2 to 30. All together 29, data sets were used for each three types of model for which 15 data sets were used for training, 7 data sets for validation, and 7 data sets for testing. The experimental results were used for testing and validation of three types of ANN models. Three ANN models (Models "A," "B," and "C") were trained and tested reasonably well to predict COD and NH4+-N removal efficiently with 3.33% experimental error.
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