基于GA-PSO优化的RBF神经网络的发电机组故障诊断

Yu-liang Qian, Hao Zhang, D. Peng, Cong-Hua Huang
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引用次数: 7

摘要

粒子群算法-RBF在发电机组智能故障诊断中得到了广泛的应用。针对粒子群算法收敛速度慢、准确率低以及影响粒子群- rbf训练速度和诊断准确率的早熟问题,将遗传算法(GA)的交叉和变异操作引入粒子群算法,以提高粒子群算法的性能。采用GA-PSO对RBF神经网络进行具体步骤的优化,并将GA-PSO-RBF应用于发电机组故障诊断。仿真结果表明,GA-PSO-RBF在训练速度、收敛精度和诊断精度方面都优于PSO-RBF,是一种新的高效诊断方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault diagnosis for generator unit based on RBF neural network optimized by GA-PSO
PSO (Particle Swarm Optimization)-RBF is widely used in intelligent fault diagnosis for generator unit. Since PSO has slow convergence rate, low accuracy, and early-maturing problem which effect training speed and diagnosis accuracy of PSO-RBF, the operations of crossover and variation of genetic algorithm (GA) are introduced into PSO such that the performance of PSO can be improved. GA-PSO is employed to optimize the RBF neural network with concrete steps, then GA-PSO-RBF is applied in fault diagnosis for generator unit. Simulation results show that GA-PSO-RBF is superior to PSO-RBF in training speed, convergence accuracy, and diagnosis accuracy, thus, it is a new efficient diagnosis approach.
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