Using a Random Forest Model to Choose Optimized Group Structures

被引:1
作者
Saller, Thomas G. [1 ]
Nair, Vishnu [1 ]
Till, Andrew [1 ]
Gibson, Nathan [1 ]
机构
[1] Alamos Natl Lab, POB 1663, Los Alamos, NM 87545 USA
关键词
Multigroup; optimization; simulated annealing; random forest; machine learning; ENERGY-GROUP-STRUCTURE;
D O I
10.1080/00295639.2022.2133940
中图分类号
TL [原子能技术]; O571 [原子核物理学];
学科分类号
0827 ; 082701 ;
摘要
It is challenging to select an appropriate group structure for any given multigroup neutron transport problem. Many group structures were designed long ago, and the reasoning behind the creator's choices may be unknown. In this work, we apply the simulated annealing optimization method to develop improved group structures for a set of test problems. We then use a random forest (a machine learning method) to identify which group structure will be the best for any new problem based on input characteristics, such as geometry and isotopics.Simulated annealing spans a large solution space before narrowing in on an optimal solution, avoiding local minima by jumping around. Our solution space, however, is large and inconsistent, making finding the optimal group structure infeasible. Instead, we find potentially optimal group structures, ones that yield more accurate solutions than our standard group structures, but are probably not the "best" possible. Group structures are obtained for six classes of problems, ranging from a fast U-233 system to a thermal Pu-239 system. These were chosen to encompass a series of critical assemblies from the International Criticality Safety Benchmark Evaluation Project (ICSBEP) handbook. These optimized group structures were used in PARTISN for a large range of ICSBEP critical assemblies and compared to the traditional Los Alamos National Laboratory group structures. Our reference solution was from 618-group PARTISN runs. The results were used to train a random forest regressor model with bagging, which was then tested on similar benchmarks. The bagging regressor model chose the best group structure from 52% to 65% of the time, and a subjectively "good" group structure up to 91% of the time.
引用
收藏
页码:2117 / 2135
页数:19
相关论文
共 28 条
[1]   A NOVEL APPROACH TO FIND OPTIMIZED NEUTRON ENERGY GROUP STRUCTURE IN MOX THERMAL LATTICES USING SWARM INTELLIGENCE [J].
Akbari, M. ;
Khoshahval, F. ;
Minuchehr, A. ;
Zolfaghari, A. .
NUCLEAR ENGINEERING AND TECHNOLOGY, 2013, 45 (07) :951-960
[2]   An investigation for an optimized neutron energy-group structure in thermal lattices using Particle Swarm Optimization [J].
Akbari, M. ;
Minuchehr, A. ;
Zolfaghari, A. ;
Khoshahval, F. .
ANNALS OF NUCLEAR ENERGY, 2012, 47 :53-61
[3]  
ALCOUFFE R.E., 2020, LAUR1729704 LOS AL N
[4]  
[Anonymous], Scikit Learn
[5]  
Biau G, 2012, J MACH LEARN RES, V13, P1063
[6]  
Boyd III W.R.D., 2017, Reactor agnostic multigroup cross-section generation for fine-mesh deterministic neutron transport simulations
[7]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[8]   An adaptive deviation-resistant neutron spectrum unfolding method based on transfer learning [J].
Cao, Chenglong ;
Gan, Quan ;
Song, Jing ;
Yang, Qi ;
Hu, Liqin ;
Wang, Fang ;
Zhou, Tao .
NUCLEAR ENGINEERING AND TECHNOLOGY, 2020, 52 (11) :2452-2459
[9]  
Carr R., Simulated annealing
[10]   Status of research and development of learning-based approaches in nuclear science and engineering: A review [J].
Gomez-Fernandez, Mario ;
Higley, Kathryn ;
Tokuhiro, Akira ;
Welter, Kent ;
Wong, Weng-Keen ;
Yang, Haori .
NUCLEAR ENGINEERING AND DESIGN, 2020, 359