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基于FCNN-NSGA-Ⅲ的反应堆辐射屏蔽设计智能优化研究

Research on Intelligent Optimization of Reactor Radiation Shielding Design Based on FCNN-NSGA-Ⅲ

  • 摘要: 为了解决传统的辐射屏蔽设计中存在的效率低且误差高的问题,提出了一种基于全连接神经网络(FCNN)与第三代非支配排序遗传算法(NSGA-III)相耦合的反应堆屏蔽设计智能优化方法。以熔盐反应堆为例,建立反应堆屏蔽优化模型并利用蒙特卡罗软件计算大量样本,使用FCNN对计算数据进行机器学习,建立输入层参数与输出层参数的的多维非线性映射关系,将神经网络预测结果作为计算适应度函数的依据,基于NSGA-III进行多目标寻优,得到辐射屏蔽设计多目标优化的pareto最优解。研究结果表明,FCNN耦合NSGA-III的方法在求解多目标优化问题中表现良好,可实际应用于先进反应堆屏蔽设计中。

     

    Abstract: In order to solve the problems of low efficiency and high error in traditional radiation shielding design, an intelligent optimization method for reactor shielding design based on the coupling of the fully connected neural network (FCNN) and the third generation non dominated sorting genetic algorithm (NSGA-III) was proposed. Taking a molten salt reactor as an example, the reactor shielding optimization model is established and Monte Carlo software is used to calculate a large number of samples. FCNN is used to machine learn the calculation data, and the multi-dimensional nonlinear mapping relationship between input layer parameters and output layer parameters is established. The neural network prediction results are used as the basis for calculating the fitness function. Based on NSGA-III, multi-objective optimization is carried out to obtain the Pareto optimal solution for multi-objective optimization of radiation shielding design. The results show that the FCNN coupled NSGA-III method performs well in solving multi-objective optimization problems and can be applied to reactor shielding design.

     

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