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Optimization of the core configuration design using a hybrid artificial intelligence algorithm for research reactors

机译:使用混合人工智能算法优化研究堆的堆芯配置设计

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摘要

To successfully carry out material irradiation experiments and radioisotope productions, a high thermal neutron flux at irradiation box over a desired life time of a core configuration is needed. On the other hand, reactor safety and operational constraints must be preserved during core configuration selection. Two main objectives and two safety and operational constraints are suggested to optimize reactor core configuration design. Suggested parameters and conditions are considered as two separate fitness functions composed of two main objectives and two penalty functions. This is a constrained and combinatorial type of a multi-objective optimization problem. In this paper, a fast and effective hybrid artificial intelligence algorithm is introduced and developed to reach a Pareto optimal set. The hybrid algorithm is composed of a fast and elitist multi-objective genetic algorithm (GA) and a fast fitness function evaluating system based on the cascade feed forward artificial neural networks (ANNs). A specific GA representation of core configuration and also special GA operators are introduced and used to overcome the combinatorial constraints of this optimization problem. A software package (Core Pattern Calculator 1) is developed to prepare and reform required data for ANNs training and also to revise the optimization results. Some practical test parameters and conditions are suggested to adjust main parameters of the hybrid algorithm. Results show that introduced ANNs can be trained and estimate selected core parameters of a research reactor very quickly. It improves effectively optimization process. Final optimization results show that a uniform and dense diversity of Pareto fronts are gained over a wide range of fitness function values. To take a more careful selection of Pareto optimal solutions, a revision system is introduced and used. The revision of gained Pareto optimal set is performed by using developed software package. Also some secondary operational and safety terms are suggested to help for final trade-off. Results show that the selected benchmark case study is dominated by gained Pareto fronts according to the main objectives while safety and operational constraints are preserved.
机译:为了成功地进行材料辐照实验和放射性同位素生产,需要在芯构型的期望寿命内在辐照箱处具有高热中子通量。另一方面,在选择堆芯配置时必须保留反应堆的安全性和运行限制。为优化反应堆堆芯配置设计,提出了两个主要目标以及两个安全和运行约束。建议的参数和条件被视为由两个主要目标和两个惩罚函数组成的两个单独的适应度函数。这是多目标优化问题的约束和组合类型。本文介绍并开发了一种快速有效的混合人工智能算法,以达到帕累托最优集。该混合算法由快速精英多目标遗传算法(GA)和基于级联前馈人工神经网络(ANN)的快速适应度评估系统组成。引入了核心配置的特定GA表示以及特殊的GA运算符,并将其用于克服此优化问题的组合约束。开发了一个软件包(核心模式计算器1)来准备和改革ANN训练所需的数据,并修改优化结果。建议一些实际的测试参数和条件来调整混合算法的主要参数。结果表明,可以对引入的人工神经网络进行训练并非常迅速地估算研究堆的选定核心参数。它有效地改善了优化过程。最终的优化结果表明,在广泛的适应度函数值上均获得了均匀且密集的帕累托锋面多样性。为了更仔细地选择Pareto最优解,引入并使用了修订系统。使用开发的软件包对获得的帕累托最优集进行修订。还建议一些辅助操作和安全术语以帮助最终权衡。结果表明,根据主要目标,所选基准案例研究以获得的帕累托前沿为主导,同时保留了安全性和操作性约束。

著录项

  • 来源
    《Nuclear Engineering and Design》 |2009年第12期|2786-2799|共14页
  • 作者单位

    Department of Nuclear Engineering and Physics, Amirkabir University of Technology (Tehran Polytechnic), 424 Hafez Avenue, P.O. Box 15875-4413, Tehran, Iran Reactor Research and Development School, Nuclear Science and Technology Research Institute (NSTRI), End of North Karegar Street, P.O. Box 14395-836, Tehran, Iran;

    Department of Nuclear Engineering and Physics, Amirkabir University of Technology (Tehran Polytechnic), 424 Hafez Avenue, P.O. Box 15875-4413, Tehran, Iran;

    Department of Computer Engineering, Amirkabir University of Technology (Tehran Polytechnic), 424 Hafez Avenue, P.O. Box 15875-4413, Tehran, Iran;

    Reactor Research and Development School, Nuclear Science and Technology Research Institute (NSTRI), End of North Karegar Street, P.O. Box 14395-836, Tehran, Iran;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    cd: crowding distance; D: normalized distance; f_c: crossover fraction; f_k: values of the kth objective function (fitness function); f_p: Pareto front fraction; et al;

    机译:cd:拥挤距离;D:归一化距离;f_c:交叉分数;f_k:第k个目标函数(适应度函数)的值;f_p:帕累托前沿分数;等;

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