Data-driven models for fault detection using kernel PCA: A water distribution system case study

A. Nowicki, M. Grochowski, K. Duzinkiewicz
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引用次数: 27

Abstract

Kernel Principal Component Analysis (KPCA), an example of machine learning, can be considered a non-linear extension of the PCA method. While various applications of KPCA are known, this paper explores the possibility to use it for building a data-driven model of a non-linear system-the water distribution system of the Chojnice town (Poland). This model is utilised for fault detection with the emphasis on water leakage detection. A systematic description of the system’s framework is followed by evaluation of its performance. Simulations prove that the presented approach is both flexible and efficient.
基于核主成分分析的数据驱动故障检测模型:配水系统案例研究
核主成分分析(KPCA)是机器学习的一个例子,可以被认为是PCA方法的非线性扩展。虽然已知KPCA的各种应用,但本文探讨了将其用于建立非线性系统(波兰Chojnice镇的供水系统)的数据驱动模型的可能性。该模型用于故障检测,重点是漏水检测。系统地描述系统的框架,然后对其性能进行评估。仿真结果表明,该方法既灵活又高效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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