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An intelligent online fault diagnostic scheme for nonlinear systems

An intelligent online fault diagnostic scheme for nonlinear systems
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摘要 An online fault diagnostic scheme for nonlinear systems based on neurofuzzy networks is proposed in this paper. The scheme involves two stages. In the first stage, the nonlinear system is approximated by a neurofuzzy network, which is trained offline from data obtained during the normal operation of the system. In the second stage, residual is generated online from this network and is modelled by another neurofuzzy network trained online. Fuzzy rules are extracted from this network, and are compared with those in the fault database obtained under different faulty operations, from which faults are diagnosed. The performance of the proposed intelligent fault scheme is illustrated using a two-tank water level control system under different faulty conditions . An online fault diagnostic scheme for nonlinear systems based on neurofuzzy networks is proposed in this paper. The scheme involves two stages. In the first stage, the nonlinear system is approximated by a neurofuzzy network, which is trained offline from data obtained during the normal operation of the system. In the second stage, residual is generated online from this network and is modelled by another neurofuzzy network trained online. Fuzzy rules are extracted from this network, and are compared with those in the fault database obtained under different faulty operations, from which faults are diagnosed. The performance of the proposed intelligent fault scheme is illustrated using a two-tank water level control system under different faulty conditions .
作者 Hing Tung MOK
出处 《控制理论与应用(英文版)》 EI 2008年第3期267-272,共6页
基金 This paper was presented at the 25th Chinese Control Conference and was supported by the HKSAR RGC Grant (HKU 7050/02E).
关键词 Fault diagnosis Nonlinear systems Neurofuzzy networks Fault diagnosis Nonlinear systems Neurofuzzy networks
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参考文献10

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