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基于反向传播神经网络的活性污泥模型中化学需氧量成分参数实时预测

Real-time prediction of the chemical oxygen demand component parameters in activated sludge model using backpropagation neural network.

作者信息

Wang Ping, Chen Yanqiong, Zhang Chen, Shi Yuzhen, Wang Bin, Lai Chaochao, He Huan, Huang Bin

机构信息

Faculty of Environmental Science and Engineering, Kunming University of Science and Technology, Kunming, 650500, China.

School of Environment and Resource, Southwest University of Science and Technology, Mianyang, Sichuan, 621010, China.

出版信息

Heliyon. 2024 Aug 8;10(16):e35580. doi: 10.1016/j.heliyon.2024.e35580. eCollection 2024 Aug 30.

Abstract

Activated sludge models are increasingly being adopted to guide the operation of wastewater treatment plants. Chemical oxygen demand (COD) is an indispensable input for such models. To ensure that the activated sludge mathematical model can adapt to various water quality conditions and minimize prediction errors, it is essential to predict the parameters of the COD components in real-time based on the actual influent COD concentrations. However, conventional methods of determining the components' contributions are too intricate and time-consuming to be really useful. In this study, the chemical oxygen demand in the actual waste water treatment plant was disassembled and analyzed. The research involved determining the proportions of each COD component, assessing the reliability of the measurement parameters, and examining potential factors affecting measurement accuracy, including weather conditions, pipeline conditions, and residents' habits. Then, a backpropagation neural network was developed which can deliver real-time predictions for five important contributors to COD in real time. In addition, using the receiver operating characteristics curve and prediction accuracy to evaluate the performance of the prediction model. For all five components, which S, X, S, X, and X, the prediction accuracy of model was more than 80 %. The maximum deviation values of these parameters fall within the range of the actual detected values, suggesting that the model's predictions align well with real-world observations, and demonstrated prediction performance adequate for practical application in wastewater treatment. This article can provide research basis for the engineering application of activated sludge model and help for the intelligent upgrading of waste water treatment plants.

摘要

活性污泥模型越来越多地被用于指导污水处理厂的运行。化学需氧量(COD)是此类模型不可或缺的输入参数。为确保活性污泥数学模型能够适应各种水质条件并最大限度地减少预测误差,基于实际进水COD浓度实时预测COD组分参数至关重要。然而,传统的确定组分贡献的方法过于复杂且耗时,难以真正发挥作用。本研究对实际污水处理厂中的化学需氧量进行了拆解分析。研究内容包括确定各COD组分的比例、评估测量参数的可靠性以及考察影响测量准确性的潜在因素,包括天气状况、管道状况和居民习惯等。然后,开发了一种反向传播神经网络,可实时对COD的五个重要贡献组分进行预测。此外,利用接收者操作特征曲线和预测准确性来评估预测模型的性能。对于所有五个组分,即S、X、S、X和X,模型的预测准确率均超过80%。这些参数的最大偏差值落在实际检测值范围内,表明模型的预测与实际观测结果吻合良好,证明了该预测性能在污水处理实际应用中足够适用。本文可为活性污泥模型的工程应用提供研究依据,并有助于污水处理厂的智能化升级。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7ce5/11367277/68f97e214a3f/ga1.jpg

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