Quantifying uncertainties on fission fragment mass yields with mixture density networks

Volume: 47, Issue: 11, Pages: 114001
Published: Nov 1, 2020
Abstract
Probabilistic machine learning techniques can learn both complex relations between input features and output quantities of interest as well as take into account stochasticity or uncertainty within a data set. In this initial work, we explore the use of one such probabilistic network, the Mixture Density Network (MDN), to reproduce fission yields and their uncertainties. We study mass yields for the spontaneous fission of ^{252}f, exploring...
Paper Details
Title
Quantifying uncertainties on fission fragment mass yields with mixture density networks
Published Date
Nov 1, 2020
Volume
47
Issue
11
Pages
114001
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