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Estimation of Neutronic Performance of a High Power Density Hybrid Reactor by Multilayer Perceptron Neural Networks

机译:多层感知器神经网络估计高功率密度混合堆的中子性能

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Artificial neural networks (ANNs) have recently been utilized in the nuclear technology applications since they are fast, precise and flexible vehicles to modeling, simulation and optimization. This paper presents a new approach based on multilayer perceptron neural networks (MLPNNs) for the estimation of some important neutronic parameters (net ~(239)Pu production, tritium breeding ratio, cumulative fissile fuel enrichment, and fission rate) of a high power density fusion-fission (hybrid) reactor using light water reactor (LWR) spent fuel. A comparison of the results obtained by the MLPNNs and those found by using the code (Scale 4.3) was carried out. The results pointed out that the MLPNNs trained with least mean squares (LMS) algorithm could provide an accurate computation of the main neutronic parameters for the high power density reactor.
机译:人工神经网络(ANN)最近在核技术应用中得到了应用,因为它们是快速,精确和灵活的建模,仿真和优化工具。本文提出了一种基于多层感知器神经网络(MLPNN)的新方法,用于估算高功率密度的一些重要中子学参数(净〜(239)Pu产量,tri繁殖率,累积易裂变燃料富集和裂变速率)使用轻水反应堆(LWR)乏燃料的聚变裂变(混合)反应堆。对通过MLPNN获得的结果与使用代码(等级4.3)发现的结果进行了比较。结果指出,用最小均方(LMS)算法训练的MLPNNs可以为高功率密度反应堆提供主要中子参数的准确计算。

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