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Fault diagnosis of gearbox based on RBF-PF and particle swarm optimization wavelet neural network

机译:基于RBF-PF和粒子群优化小波神经网络的齿轮箱故障诊断

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The gear cracks of gear box are one of most common failure forms affecting gear shaft drive. It has become significant for practice and economy to diagnose the situation of gearbox rapidly and accurately. The extracted signal is filtered first to eliminate noise, which is pretreated for the diagnostic classification based on the particle filter of radial basis function. As traditional error back-propagation of wavelet neural network with falling into local minimum easily, slow convergence speed and other shortcomings, the particle swarm optimization algorithm is proposed in this paper. This particle swarm algorithm that optimizes the weight values of wavelet neural network (scale factor) and threshold value (the translation factor) was developed to reduce the iteration times and improve the convergence precision and rapidity so that the various parameters of wavelet neural network can be chosen adaptively. Experimental results demonstrate that the proposed method can accurately and quickly identify the damage situation of the gear crack, which is more robust than traditional back-propagation algorithm. It provides guidances and references for the maintenance of the gear drive system schemes.
机译:齿轮箱的齿轮裂缝是影响齿轮轴驱动器的最常见的故障形式之一。实践和经济迅速准确地诊断齿轮箱的情况已经重要。首先滤波提取的信号以消除噪声,其基于径向基函数的粒子滤波器预处理诊断分类。随着小波神经网络的传统误差反向传播,易于落入局部最小,收敛速度缓慢等缺点,本文提出了粒子群优化算法。该粒子群算法开发了优化小波神经网络(比例因子)和阈值(平移因子)的重量值以减少迭代时间并提高收敛精度和快速,以便可以是小波神经网络的各种参数自适应选择。实验结果表明,所提出的方法可以准确且快速地识别齿轮裂纹的损坏情况,比传统的背传播算法更强大。它提供了维护齿轮驱动系统方案的指导和参考。

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