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人工神经网络在生物去除有机碳和氮中的建模,用于处理屠宰废水中的 batch 反应器。

Artificial neural network modelling in biological removal of organic carbon and nitrogen for the treatment of slaughterhouse wastewater in a batch reactor.

出版信息

Environ Technol. 2014 May-Jun;35(9-12):1296-306. doi: 10.1080/09593330.2013.866698.

DOI:10.1080/09593330.2013.866698
PMID:24701927
Abstract

Wastewater containing high concentration of oxygen-demanding carbonaceous organics and nitrogenous materials (chemical oxygen demand (COD) and total Kjeldahl nitrogen (TKN)) as nutrients emanated from small- to large-scale slaughterhouse units cause depletion of dissolved oxygen in water bodies and attributes to the threat of eutrophication. Biological treatment of wastewater is a useful tool through ages for the treatment of wastewater owing to its cost-effectiveness, reliability along with its innocuous output features. This paper deals with the treatment of slaughter house wastewater by conducting a laboratory scale batch reactor with different input characterized samples, and the experimental results were explored for the formulation of feed-forward back-propagation artificial neural network (ANN) to predict the combined removal of COD and TKN. The ANN modelling was carried out using neural network tool box of MATLAB (version 7.0), with the Levenberg-Marquardt training algorithm. Various trials were examined for the training of the ANN model using the number of neurons in the hidden layer varying from 2 to 30. The mean square error function and regression analysis were also applied for performance analysis of the ANN model. All the input data were logged-in after carrying out detailed experiment in the laboratory with a view to examine the performance of the batch reactor for the treatment of slaughterhouse wastewater. The experimental results were used for testing and validating the ANN model.

摘要

来自从小型到大型屠宰场单元的含有高浓度需氧碳质有机物和含氮物质(化学需氧量 (COD) 和总凯氏氮 (TKN))的废水是水体中溶解氧的消耗物,并导致富营养化的威胁。生物处理废水是一种经过多年验证的有效工具,因其具有成本效益、可靠性以及无害的输出特点。本文通过在实验室规模的分批式反应器中处理不同输入特性的屠宰场废水样本,探讨了前馈反向传播人工神经网络 (ANN) 的应用,以预测 COD 和 TKN 的综合去除率。ANN 模型使用 MATLAB(版本 7.0)的神经网络工具箱和 Levenberg-Marquardt 训练算法进行建模。通过改变隐藏层中的神经元数量(从 2 到 30),对 ANN 模型进行了多次训练。还应用均方误差函数和回归分析对 ANN 模型的性能进行了分析。所有输入数据均在实验室进行详细实验后记录,以检验分批式反应器处理屠宰场废水的性能。实验结果用于测试和验证 ANN 模型。

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