Abstract
Predictions of nuclear models guide the design of nuclear facilities to ensure their safe and efficient operation. Because nuclear models often do not perfectly reproduce available experimental data, decisions based on their predictions may not be optimal. Awareness about systematic deviations between models and experimental data helps to alleviate this problem. This paper shows how a sparse approximation to Gaussian processes can be used to estimate the model bias over the complete nuclide chart at the example of inclusive double-differential neutron spectra for incident protons above 100 MeV. A powerful feature of the presented approach is the ability to predict the model bias for energies, angles, and isotopes where data are missing. The number of experimental data points that can be taken into account is at least in the order of magnitude of 104 thanks to the sparse approximation. The approach is applied to the Liège intranuclear cascade model coupled to the evaporation code ABLA. The results suggest that sparse Gaussian process regression is a viable candidate to perform global and quantitative assessments of models. Limitations of a philosophical nature of this (and any other) approach are also discussed.
Reference22 articles.
1. Rasmussen C.E.,
Williams C.K.I.,
Gaussian Processes for Machine Learning
(MIT Press,
Cambridge,
Mass.,
2006)
2. Muir D.W.,
Trkov A.,
Kodeli I.,
Capote R.,
Zerkin V.,
The Global Assessment of Nuclear Data, GANDR
(EDP Sciences,
2007)
3. Consistent Procedure for Nuclear Data Evaluation Based on Modeling
4. Herman M.,
Pigni M.,
Oblozinsky P.,
Mughabghab S.,
Mattoon C.,
Capote R.,
Cho Y.S.,
Trkov A.,
Tech. Rep. BNL-81624-2008-C P,
Brookhaven National Laboratory,
2008
Cited by
7 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献