Title :
Fault Diagnosis of Helical Coil Steam Generator Systems of an Integral Pressurized Water Reactor Using Optimal Sensor Selection
Author :
Li, Fan ; Upadhyaya, Belle R. ; Perillo, Sergio R P
Author_Institution :
Altran Solutions, Norcross, GA, USA
fDate :
4/1/2012 12:00:00 AM
Abstract :
Fault diagnosis is an important area in nuclear power industry for effective and continuous operation of power plants. Fault diagnosis approaches depend critically on the sensors that measure important process variables. Allocation of these sensors determines the effectiveness of fault diagnostic methods. However, the emphasis of most approaches is primarily on the procedure to perform fault detection and isolation (FDI) given a set of sensors. Little attention has been given to actual allocation of the sensors for achieving efficient FDI performance. This paper presents a graph-based approach as a solution for optimization of sensor selection to ensure fault observability, as well as fault resolution to a maximum possible extent. Principal component analysis (PCA), a multivariate data-driven technique, is used to capture the relationships among the measurements and to characterize by a data hyper-plane. Fault directions for the different fault scenarios are obtained using singular value decomposition of the prediction errors, and fault isolation is then accomplished from new projections on these fault directions. Results of the helical coil steam generator (HCSG) system of the International Reactor Innovative and Secure (IRIS) nuclear reactor demonstrate the proposed FDI approach with optimized sensor selection, and its future application to large industrial systems.
Keywords :
coils; fault diagnosis; fission reactor operation; fission reactor safety; light water reactors; nuclear power stations; nuclear reactor steam generators; principal component analysis; International Reactor Innovative and Secure nuclear reactor; continuous power plant operation; data hyperplane; data-driven technique; efficient FDI performance; error prediction; fault detection; fault diagnostic methods; fault directions; fault isolation; fault observability; fault resolution; graph-based approach; helical coil steam generator systems; integral pressurized water reactor; multivariate data-driven technique; nuclear power industry; optimal sensor selection; power plant effective operation; principal component analysis; process variables; sensor selection optimization; singular value decomposition; Fault diagnosis; Generators; Inductors; Iris; Mathematical model; Observability; Principal component analysis; Fault diagnosis; helical coil steam generator; optimum sensor selection; principal component analysis;
Journal_Title :
Nuclear Science, IEEE Transactions on
DOI :
10.1109/TNS.2012.2185509