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Nuclear power plant fault diagnosis based on genetic-RBF neural network

机译:基于遗传-RBF神经网络的核电站故障诊断

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It is necessary to develop an automatic fault diagnosis system to avoid a possible nuclear disaster caused by an inaccurate fault diagnosis in the nuclear power plant by the operator. Because Radial Basis Function Neural Network (RBFNN) has the characteristics of optimal approximation and global approximation. The mixed coding of binary system and decimal system is introduced to the structure and parameters of RBFNN, which is trained in course of the genetic optimization. Finally, a fault diagnosis system according to the frequent faults in condensation and feed water system of nuclear power plant is set up. As a result, Genetic-RBF Neural Network (GRBFNN) makes the neural network smaller in size and higher in generalization ability. The diagnosis speed and accuracy are also improved.
机译:有必要开发一种自动故障诊断系统,以避免操作员在核电厂中由于错误的故障诊断而导致的可能的核灾难。由于径向基函数神经网络(RBFNN)具有最优逼近和全局逼近的特征。将二进制和十进制的混合编码引入到RBFNN的结构和参数中,在遗传优化的过程中对其进行训练。最后,针对核电站凝结水和给水系统中的常见故障,建立了故障诊断系统。结果,遗传-RBF神经网络(GRBFNN)使神经网络的大小更小,泛化能力更高。诊断速度和准确性也得到提高。

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