4.5 Article

A digital twin approach to system-level fault detection and diagnosis for improved equipment health monitoring

Journal

ANNALS OF NUCLEAR ENERGY
Volume 170, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.anucene.2022.109002

Keywords

Feedwater system; Real-time data; Model-based diagnosis; Fault detection; Digital twin

Funding

  1. U.S. Department of Energy, Office of Nuclear Energy
  2. Argonne, a DOE Office of Science laboratory [DE-AC02-06CH11357]

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This paper presents a physics-based approach for system-level fault diagnosis in thermal-hydraulic systems in nuclear power plants. By utilizing virtual sensors and physics information, the fault diagnosis capability is improved with constrained solutions. The effectiveness of the approach is demonstrated through practical tests and simulated fault events.
Automating the task of fault detection and diagnosis is crucial in the effort to reduce the operation and maintenance cost in the nuclear industry. This paper describes a physics-based approach for system-level diagnosis in thermal-hydraulic systems in nuclear power plants. The inclusion of physics information allows for the creation of virtual sensors, which provide improved fault diagnosis capability. The physics information also serves to better constrain diagnostic solutions to the physical domain. As a demonstration, various test cases for fault diagnosis in a high-pressure feedwater system were considered. The use of virtual sensors allows constructing performance models for two first-point feedwater heaters which would not have been possible otherwise due to the limited sensor set. Real-time plant data provided by a utility partner were used to assess the diagnostic approach. The detection of an abnormal event immediate after a plant startup pointed to faulty behaviors in the two first-point feedwater heaters. This double-blind fault diagnosis was subsequently confirmed by the plant operator. In addition, several simulated sensor fault events demonstrated the capability of our algorithms in detecting and discriminating sensor faults. (c) 2022 Elsevier Ltd. All rights reserved.

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