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Sensitivity study on determining an efficient set of fuel assembly parameters in training data for designing of neural networks in hybrid genetic algorithms

机译:混合遗传算法中用于设计神经网络的训练数据中确定一组有效燃料组件参数的敏感性研究

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Neural Networks (NNs) were applied as a tool for simulating several nuclear reactor physics parameters during core depletion calculations. The main objective was to develop NNs models capable of simulating useful reactor physics parameters to filter out the bad designs created in Genetic Algorithms (GAs) run without the need to perform reactor physics calculations for evaluation of individuals. Applying GAs to optimize both the nuclear reactor Loading Pattern (LP) and Burnable Poison (BP) designs for their respective performance characteristics creates many unwanted results along the way. New population individuals are normally analyzed with a reactor physics code to determine its fitness or applicability for future use. Significant time was required for each reactor physics code calculation and because most of the solution individuals created by GAs result in unusable designs, analyzing every solutions involves prohibitive computational times. Such long computational times can be greatly reduced by applying NNs to filter out most of the unwanted designs. A detailed description of the selection process of the NN architecture, training method, and adequate ranges of data are also presented. Finally, a hybrid GA algorithm is proposed in which two NNs are used to discard most of the worse LP and BP designs.
机译:神经网络(NNs)被用作在堆芯消耗计算过程中模拟几个核反应堆物理参数的工具。主要目标是开发能够模拟有用的反应堆物理参数的NN模型,以过滤掉遗传算法(GA)运行中产生的不良设计,而无需执行反应堆物理计算来评估个人。应用GA来优化其各自性能特征的核反应堆装载模式(LP)和可燃毒物(BP)设计均会产生许多不良结果。通常使用反应堆物理代码对新的人口个体进行分析,以确定其适用性或适用性,以备将来使用。每次反应堆物理代码的计算都需要大量时间,而且由于由遗传算法创建的大多数解决方案个体会导致无法使用的设计,因此分析每种解决方案都需要花费大量的计算时间。通过应用神经网络过滤掉大多数不需要的设计,可以大大减少如此长的计算时间。还详细介绍了NN体系结构的选择过程,训练方法和足够的数据范围。最后,提出了一种混合遗传算法,其中两个神经网络用于丢弃大多数较差的LP和BP设计。

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