Incipient multiple fault diagnosis in real time with application to large-scale systems

By using a modified signed directed graph (SDG) together with the distributed artificial neural networks and a knowledge-based system, a method of incipient multi-fault diagnosis is presented for large-scale physical systems with complex pipes and instrumentations such as valves, actuators, sensors,...

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Veröffentlicht in:IEEE transactions on nuclear science 1994-08, Vol.41 (4), p.1692-1703
Hauptverfasser: Hak-yeong Chung, Bien, Z., Joo-hyun Park, Poong-hyun Seong
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container_end_page 1703
container_issue 4
container_start_page 1692
container_title IEEE transactions on nuclear science
container_volume 41
creator Hak-yeong Chung
Bien, Z.
Joo-hyun Park
Poong-hyun Seong
description By using a modified signed directed graph (SDG) together with the distributed artificial neural networks and a knowledge-based system, a method of incipient multi-fault diagnosis is presented for large-scale physical systems with complex pipes and instrumentations such as valves, actuators, sensors, and controllers. The proposed method is designed so as to (1) make a real-time incipient fault diagnosis possible for large-scale systems, (2) perform the fault diagnosis not only in the steady-state case but also in the transient case as well by using a concept of fault propagation time, which is newly adopted in the SDG model, (3) provide with highly reliable diagnosis results and explanation capability of faults diagnosed as in an expert system, and (4) diagnose the pipe damage such as leaking, break, or throttling. This method is applied for diagnosis of a pressurizer in the Kori Nuclear Power Plant (NPP) unit 2 in Korea under a transient condition, and its result is reported to show satisfactory performance of the method for the incipient multi-fault diagnosis of such a large-scale system in a real-time manner.< >
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The proposed method is designed so as to (1) make a real-time incipient fault diagnosis possible for large-scale systems, (2) perform the fault diagnosis not only in the steady-state case but also in the transient case as well by using a concept of fault propagation time, which is newly adopted in the SDG model, (3) provide with highly reliable diagnosis results and explanation capability of faults diagnosed as in an expert system, and (4) diagnose the pipe damage such as leaking, break, or throttling. 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source IEEE Electronic Library (IEL)
subjects Actuators
Applied sciences
Artificial neural networks
Control systems
Energy
Energy. Thermal use of fuels
Exact sciences and technology
Fault diagnosis
Fission nuclear power plants
Installations for energy generation and conversion: thermal and electrical energy
Instruments
Knowledge based systems
Large-scale systems
Real time systems
Sensor systems
Valves
title Incipient multiple fault diagnosis in real time with application to large-scale systems
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