
Prodiag--a hybrid artificial intelligence based reactor diagnostic system for process faults
Author(s) -
Jaques Reifman,
T.Y.C. Wei,
Javier E. Vitela,
C. A. Applequist,
T.M. Chasensky
Publication year - 1996
Language(s) - English
Resource type - Reports
DOI - 10.2172/224950
Subject(s) - component (thermodynamics) , process (computing) , nuclear power plant , artificial neural network , engineering , systems engineering , control engineering , maintainability , scope (computer science) , computer science , reliability engineering , artificial intelligence , operating system , physics , nuclear physics , thermodynamics , programming language
Commonwealth Research Corporation (CRC) and Argonne National Laboratory (ANL) are collaborating on a DOE-sponsored Cooperative Research and Development Agreement (CRADA), project to perform feasibility studies on a novel approach to Artificial Intelligence (Al) based diagnostics for component faults in nuclear power plants. Investigations are being performed in the construction of a first-principles physics-based plant level process diagnostic expert system (ES) and the identification of component-level fault patterns through operating component characteristics using artificial neural networks (ANNs). The purpose of the proof-of-concept project is to develop a computer-based system using this Al approach to assist process plant operators during off-normal plant conditions. The proposed computer-based system will use thermal hydraulic (T-H) signals complemented by other non-T-H signals available in the data stream to provide the process operator with the component which most likely caused the observed process disturbance.To demonstrate the scale-up feasibility of the proposed diagnostic system it is being developed for use with the Chemical Volume Control System (CVCS) of a nuclear power plant. A full-scope operator training simulator representing the Commonwealth Edison Braidwood nuclear power plant is being used both as the source of development data and as the means to evaluate the advantages of the proposed diagnostic system. This is an ongoing multi-year project and this paper presents the results to date of the CRADA phase