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An Ensemble Application of Conflict-Resolving ART-Based Neural Networks to Fault Detection and Diagnosis

     

摘要

Accurate fault detection and diagnosis is important for secure and profitable operation of modern power systems.In this paper,an ensemble of conflict-resolving Fuzzy ARTMAP classifiers,known as Probabilistic Multiple Fuzzy ARTMAP with Dynamic Decay Adjustment(PMFAMDDA),for accurate discrimination between normal and faulty operating conditions of a Circulating Water(CW)system in a power generation plant is proposed.The decisions of PMFAMDDA are reached through a probabilistic plurality voting strategy that is in agreement with the Bayesian theorem.The results of the proposed PMFAMDDA model are compared with those from an ensemble of Probabilistic Multiple Fuzzy ARTMAP(PMFAM)classifiers.The outcomes reveal that PMFAMDDA,in general,outperforms PMFAM in discriminating operating conditions of the CW system.

著录项

  • 来源
    《测试科学与仪器》|2011年第4期|371-377|共7页
  • 作者单位

    Faculty of Information Science & Technology, Multimedia University, Bukit Beruang , Melaka 75450, Malaysia;

    School of Computer Science of University of Science Malaysia, Gelugor Penang 11700, Malaysia;

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  • 入库时间 2023-07-26 00:59:23

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