Optimizing multilayer Bayesian neural networks for evaluation of fission yields
Zi-Ao Wang, Junchen Pei
Abstract
Bayesian machine learning is a promising tool for the evaluation of nuclear fission data but its potential capability has not been fully realized. We attempt to optimize the performances of the multilayer Bayesian neural networks for evaluations of fission yields. The influences of adjustments of learning data, activation functions, and network structures have been studied. In particular, negative values of net functions have been penalized to avoid nonphysical inferences of fission yields. Presently the network with double hidden layers has optimal performances compared to the single-layer or deeper networks. These studies are essential for further developments of precise evaluation methods.
Topics & Concepts
Artificial neural networkComputer scienceFissionBayesian probabilityArtificial intelligenceBayesian networkMachine learningNeutronNuclear physicsPhysicsNuclear reactor physics and engineeringNuclear Materials and PropertiesNuclear Physics and Applications