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A constraint-based genetic algorithm for optimizing neural network architectures for detection of loss of coolant accidents of nuclear power plants

机译:基于约束的遗传算法,用于优化神经网络架构以检测核电站冷却剂事故损失

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The loss of coolant accident (LOCA) of a nuclear power plant (NPP) is a severe accident in the nuclear energy industry. Nowadays, neural networks have been trained on nuclear simulation transient datasets to detect LOCA. This paper proposes a constraint-based genetic algorithm (GA) to find optimised 2-hidden layer network architectures for detecting LOCA of a NPP. The GA uses a proposed constraint satisfaction algorithm called random walk heuristic to create an initial population of neural network architectures of high performance. At each generation, the GA population is split into a sub-population of feature subsets and a sub-population of 2-hidden layer architectures to breed offspring from each sub-population independently in order to generate a wide variety of network architectures. During breeding 2-hidden layer architectures, a constraint-based nearest neighbor search algorithm is proposed to find the nearest neighbors of the offspring population generated by mutation. The results showed that for LOCA detection, the GA-optimised network outperformed a random search, an exhaustive search and a RBF kernel support vector regression (SVR) in terms of generalization performance. For the skillcraft dataset of the UCI machine learning repository, the GA-optimised network has a similar performance to the RBF kernel SVR and outperformed the other approaches. (C) 2018 Elsevier B.V. All rights reserved.
机译:核电厂(NPP)的冷却剂损失事故(LOCA)是核能工业中的严重事故。如今,已经在核模拟瞬态数据集上训练了神经网络以检测LOCA。本文提出了一种基于约束的遗传算法(GA),以找到用于检测NPP的LOCA的优化的2隐藏层网络体系结构。遗传算法使用一种提出的约束满足算法,称为随机游走启发法,以创建高性能的神经网络体系结构的初始种群。在每一代中,GA种群都分为特征子集的子种群和2隐藏层架构的子种群,以独立地繁殖每个子种群的后代,以生成各种各样的网络体系结构。在繁殖2隐藏层架构期间,提出了一种基于约束的最近邻居搜索算法,以查找由突变产生的后代种群的最近邻居。结果表明,对于LOCA检测,GA优化网络在泛化性能方面优于随机搜索,穷举搜索和RBF核支持向量回归(SVR)。对于UCI机器学习存储库的Skillcraft数据集,经过GA优化的网络的性能与RBF内核SVR相似,并且优于其他方法。 (C)2018 Elsevier B.V.保留所有权利。

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