NEURAL NETWORK MODEL FOR ESTIMATING DEPARTURE FROM NUCLEATE BOILING PERFORMANCE OF A PRESSURIZED WATER-REACTOR CORE

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A new approach for estimating the departure from nucleate boiling (DNB) performance of a pressurized water reactor core is proposed in which a neural network model is introduced to predict the DNB ratios (DNBRs) for given reactor operating conditions. This model is trained against the detailed simulation results of DNBRs obtained from optimized random input vectors that are generated by Latin hypercube sampling on a wide range of parameters. The trained network is examined to verify the generalized prediction capability of the model. The test results show that a higher level of accuracy in predicting the DNBR can be achieved with the neural network model for both steady-state and transient operating conditions. The neural network model can be developed as a viable tool for on-line DNBR estimation in a nuclear power plant.
Publisher
AMER NUCLEAR SOCIETY
Issue Date
1993-02
Language
English
Article Type
Article
Citation

NUCLEAR TECHNOLOGY, v.101, no.2, pp.111 - 122

ISSN
0029-5450
URI
http://hdl.handle.net/10203/67056
Appears in Collection
NE-Journal Papers(저널논문)
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