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Stochastic optimization methods applied to BP network based fault diagnosis problems of rotating machinery

机译:随机优化方法在基于BP网络的旋转机械故障诊断中的应用

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BP network has been successfully used in the fault diagnosis of rotating machinery, however BP network's drawbacks, such as low convergence rate and its easy fall into local optima have restricted its wider applications, especially to those complex multimodal problems. Two of the recently proposed stochastic optimization methods: adaptive particle swarm optimization (APSO) and adaptive genetic algorithms (AGA) are discussed. And the way that BP network's initial weights and bias are optimized by those two methods is also carefully discussed. Compared with standard particle swarm optimization(SPSO), APSO solves the premature convergence problem better by giving particles a spatial extension and adaptive mutation. In this paper, firstly APSO and AGA are used to optimize the initial weights of BP network, then the APSO-BP and AGA-BP networks are used to diagnose the turbo-pump faults, and the experimental results show many advantages in convergence speed and accuracy. The comparison between AGA and APSO is also discussed.
机译:BP网络已成功地用于旋转机械的故障诊断中,但是BP网络的收敛速度低,容易陷入局部最优等缺点限制了其广泛的应用,特别是对于那些复杂的多峰问题。讨论了最近提出的两种随机优化方法:自适应粒子群优化(APSO)和自适应遗传算法(AGA)。并仔细讨论了用这两种方法优化BP网络初始权重和偏差的方法。与标准粒子群优化(SPSO)相比,APSO通过为粒子提供空间扩展和自适应突变来更好地解决过早收敛问题。本文首先使用APSO和AGA优化BP网络的初始权重,然后使用APSO-BP和AGA-BP网络诊断涡轮泵故障,实验结果表明,该算法在收敛速度和收敛速度上均具有许多优势。准确性。还讨论了AGA和APSO之间的比较。

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