A neural network approach for burn-up calculation and its application to the dynamic fuel cycle code CLASS
Nuclear scenario
Cross section predictor
PWR
0202 electrical engineering, electronic engineering, information engineering
MOX
02 engineering and technology
[PHYS.NEXP]Physics [physics]/Nuclear Experiment [nucl-ex]
530
7. Clean energy
Neural network
620
DOI:
10.1016/j.anucene.2015.03.035
Publication Date:
2015-04-04T20:49:44Z
AUTHORS (8)
ABSTRACT
Dynamic fuel cycle simulation tools calculate nuclei inventories and mass flows evolution in an entire fuel cycle, from the mine to the final disposal. Usually, the fuel depletion in reactor is handled by a fuel loading model and a mean cross section predictor. In the case of a PWR–MOX, a fuel loading model provides from a plutonium stock the plutonium fraction in the fresh fuel needed to reach a specific burnup. A mean cross section predictor aims to assess isotopic cross sections required for building Bateman equations for any fresh fuel composition with a sufficient accuracy and a reasonable computing time. This paper presents a methodology based on neural networks for building a fuel loading model and a cross section predictor for a PWR reactor loaded with MOX fuel. The mean error of the plutonium content prediction from the fuel loading model is 0.37%. Furthermore, the mean cross section predictor allows completion of the fuel depletion calculation in less than one minute with excellent accuracy. A maximum deviation of 3% on main nuclei is obtained at the end of cycle between inventories calculated from neural networks and from the reference coupled neutron transport/fuel depletion calculation.
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