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Application of Neural Networks for Sensor Validation and Plant Monitoring

Belle R. Upadhyaya, Evren Eryurek

Nuclear Technology / Volume 97 / Number 2 / February 1992 / Pages 170-176

Technical Paper / Fission Reactor / dx.doi.org/10.13182/NT92-A34613

Sensor and process monitoring in power plants requires the estimation of one or more process variables. Neural network paradigms are suitable for establishing general nonlinear relationships among a set of plant variables. Multiple-input/multiple-output autoassociative networks can follow changes in plantwide behavior. The backpropagation (BPN) algorithm has been applied for training multilayer feedforward networks. A new and enhanced BPN algorithm for training neural networks has been developed and implemented in a VAX workstation. Operational data from the Experimental Breeder Reactor II (EBR-II) have been used to study the performance of the BPN algorithm. Several results of application to the EBRII are presented.