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Statistical monitoring of a wastewater treatment plant: A case study

机译:废水处理厂的统计监控:一个案例研究

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The efficient operation of wastewater treatment plants (WWTPs) is key to ensuring a sustainable and friendly green environment. Monitoring wastewater processes is helpful not only for evaluating the process operating conditions but also for inspecting product quality. This paper presents a flexible and efficient fault detection approach based on unsupervised deep learning to monitor the operating conditions of WWTPs. Specifically, this approach integrates a deep belief networks (DBN) model and a one-class support vector machine (OCSVM) to separate normal from abnormal features by simultaneously taking advantage of the feature-extraction capability of DBNs and the superior predicting capacity of OCSVM. Here, the DBN model, which is a powerful tool with greedy learning features, accounts for the nonlinear aspects of WWTPs, while OCSVM is used to reliably detect the faults. The developed DBN-OCSVM approach is tested through a practical application on data from a decentralized WWTP in Golden, CO, USA. The results from the DBN-OCSVM are compared with two other detectors: DBN-based K-nearest neighbor and K-means algorithms. The results show the capability of the developed strategy to monitor the WWTP, suggesting that it can raise an early alert to the abnormal conditions.
机译:废水处理厂(WWTP)的有效运行对于确保可持续和友好的绿色环境至关重要。监测废水过程不仅有助于评估过程操作条件,而且有助于检查产品质量。本文提出了一种基于无监督深度学习的灵活高效的故障检测方法,以监控污水处理厂的运行状况。具体而言,此方法通过同时利用DBN的特征提取能力和OCSVM的超强预测能力,集成了深度信念网络(DBN)模型和一类支持向量机(OCSVM),以将正常特征与异常特征分开。在这里,DBN模型是具有贪婪学习功能的强大工具,可以解决WWTP的非线性方面,而OCSVM用于可靠地检测故障。已开发的DBN-OCSVM方法通过实际应用对来自美国科罗拉多州Golden的分散式WWTP的数据进行了测试。 DBN-OCSVM的结果与其他两个检测器进行了比较:基于DBN的K最近邻算法和K-means算法。结果表明,所开发策略能够监视污水处理厂,这表明它可以对异常情况进行早期预警。

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