Title :
Development of real-time core monitoring system models with accuracy-enhanced neural networks
Author :
Koo, Bon Hyun ; Kim, Hyong Chol ; Chang, Soon Heung
Author_Institution :
Korea Inst. of Nucl. Safety, Taejon, South Korea
fDate :
10/1/1993 12:00:00 AM
Abstract :
Core monitoring models using neural networks have been developed for prediction of the core parameters for pressurized water reactors. The neural network model has been shown to be successful for the conservative and accurate prediction of the departure from nucleate boiling ratio (DNBR). Several variations of the neural network technique have been proposed and compared based on numerical experiments. The neural network can be augmented by use of a functional link to improve the performance of the network model. Use of twofold weight sets or weighted system error backpropagation was very effective for improving the network model accuracy further. An uncertainty factor that is a function of output DNBR is used to obtain a conservative DNBR for actual applications. The predictions by the network model need to be supported by extensive training of network and statistical treatment of the data. Studies for further improvements are suggested for future applications
Keywords :
backpropagation; fission reactor core control and monitoring; fission reactor safety; neural nets; nuclear engineering computing; accuracy-enhanced neural networks; departure from nucleate boiling ratio; pressurized water reactors; real-time core monitoring system models; twofold weight sets; weighted system error backpropagation; Backpropagation; Condition monitoring; Inductors; Neural networks; Power generation; Predictive models; Real time systems; Safety; Uncertainty; Water conservation;
Journal_Title :
Nuclear Science, IEEE Transactions on