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首页> 外文期刊>Nuclear Instruments & Methods in Physics Research >Population-based metaheuristic optimization in neutron optics and shielding design
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Population-based metaheuristic optimization in neutron optics and shielding design

机译:中子光学和屏蔽设计中基于种群的元启发式优化

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摘要

Population-based metaheuristic algorithms are powerful tools in the design of neutron scattering instruments and the use of these types of algorithms for this purpose is becoming more and more commonplace. Today there exists a wide range of algorithms to choose from when designing an instrument and it is not always initially clear which may provide the best performance. Furthermore, due to the nature of these types of algorithms, the final solution found for a specific design scenario cannot always be guaranteed to be the global optimum. Therefore, to explore the potential benefits and differences between the varieties of these algorithms available, when applied to such design scenarios, we have carried out a detailed study of some commonly used algorithms. For this purpose, we have developed a new general optimization software package which combines a number of common metaheuristic algorithms within a single user interface and is designed specifically with neutronic calculations in mind. The algorithms included in the software are implementations of Particle-Swarm Optimization (PSO), Differential Evolution (DE), Artificial Bee Colony (ABC), and a Genetic Algorithm (GA). The software has been used to optimize the design of several problems in neutron optics and shielding, coupled with Monte-Carlo simulations, in order to evaluate the performance of the various algorithms. Generally, the performance of the algorithms depended on the specific scenarios, however it was found that DE provided the best average solutions in all scenarios investigated in this work.
机译:基于人口的元启发式算法是中子散射仪器设计中的强大工具,为此目的使用这些类型的算法变得越来越普遍。如今,在设计仪器时,存在多种算法可供选择,并且一开始并不总是很清楚哪种算法可以提供最佳性能。此外,由于这些类型的算法的性质,不能始终保证针对特定设计方案找到的最终解决方案是全局最优的。因此,为了探讨将这些算法应用于这些设计方案时,各种可用算法之间的潜在收益和差异,我们对一些常用算法进行了详细研究。为此,我们开发了一个新的通用优化软件包,该软件包在单个用户界面中结合了许多常见的元启发式算法,并且在设计时特别考虑了中子学计算。该软件中包含的算法是粒子群优化(PSO),差分进化(DE),人工蜂群(ABC)和遗传算法(GA)的实现。该软件已与Monte-Carlo仿真一起用于优化中子光学和屏蔽中若干问题的设计,以评估各种算法的性能。通常,算法的性能取决于特定的场景,但是发现DE在本文研究的所有场景中提供了最佳的平均解决方案。

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  • 作者单位

    European Spoliation Source ERIC, P.O. Box 176, SE-221 00 Lund, Sweden,Division of Nuclear Physics, Lund University, SE-221 00 Lund, Sweden;

    European Spoliation Source ERIC, P.O. Box 176, SE-221 00 Lund, Sweden,Department of Physics and Astronomy, Uppsala University, SE-751 20 Uppsala, Sweden;

    European Spoliation Source ERIC, P.O. Box 176, SE-221 00 Lund, Sweden;

    European Spoliation Source ERIC, P.O. Box 176, SE-221 00 Lund, Sweden,Department of Physics and Astronomy, Uppsala University, SE-751 20 Uppsala, Sweden;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Metaheuristic; Optimization; Neutron optics; Shielding; Monte-Carlo;

    机译:元启发式优化;中子光学;屏蔽;蒙特卡洛;

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