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A Novel Event Detection Model for Water Distribution Systems Based on Data-Driven Estimation and Support Vector Machine Classification

机译:基于数据驱动估计和支持向量机分类的供水系统事件检测新模型

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摘要

In this study, a novel event detection model based on data-driven estimation and support vector machine (SVM) classification was developed and assessed. The developed model takes advantage of the data-driven model - namely artificial neural networks (ANNs) - to predict the complicated behavior of water quality parameters without relevant physical and chemical knowledge. In addition, SVM presents high classification performance when dealing with high-dimensional data and has a better generalization ability than ANNs so that SVM can complement ANN predictions. Key parameters of SVM were optimized by genetic algorithm. After calculation of ANN prediction error and outlier classification by SVM, the event probability was estimated by Bayesian sequence analysis. The performance of the proposed model was evaluated using data from a real water distribution system with randomly simulated events. The results illustrated that the proposed model exhibited a great detection ability compared with two models with analogous structures, a pure SVM classification model and a conventional ANN-threshold classification model, demonstrating the superiority of the hybrid data-driven - SVM classification model.
机译:在这项研究中,基于数据驱动的估计和支持向量机(SVM)分类的新型事件检测模型已开发和评估。所开发的模型利用了数据驱动模型-人工神经网络(ANN)-来预测水质参数的复杂行为,而无需相关的物理和化学知识。另外,SVM在处理高维数据时表现出较高的分类性能,并且具有比ANN更好的泛化能力,因此SVM可以补充ANN预测。利用遗传算法对支持向量机的关键参数进行了优化。在通过支持向量机计算出人工神经网络预测误差和离群值后,通过贝叶斯序列分析估计事件概率。使用来自具有随机模拟事件的真实配水系统的数据评估了建议模型的性能。结果表明,与两种具有相似结构的模型(纯SVM分类模型和常规ANN阈值分类模型)相比,所提出的模型具有强大的检测能力,证明了混合数据驱动SVM分类模型的优越性。

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