基于HHO-MLP神经网络的变工况下齿轮箱故障诊断方法研究

Research on gearbox fault diagnosis method under variable working conditions based on HHO-MLP neural network

  • 摘要: 针对变工况下齿轮箱故障信号复杂多变导致故障诊断困难的问题,提出了一种基于哈里斯鹰优化器(Harris hawk optimizer, HHO)优化多层感知机(multi-layer perception, MLP)神经网络的故障诊断方法。首先,采用均方根-均值 (root mean square-mean, RMS-MEAN)方法对齿轮箱故障振动信号进行预处理,以降低随机变工况对不同振动信号的影响;其次,引入变工况修正因子k,利用HHO对MLP的超参数进行自动优化,增强振动信号中的周期性特征,构造变工况下最优的MLP网络结构;最后,将特征增强数据输入HHO-MLP中进行故障诊断。通过MCC5-THU齿轮箱故障数据集验证,该方法在变工况下对齿轮箱故障的诊断性能显著优于其他模型,故障分类的准确率可达97.5%,这说明了其在变工况下的有效性。

     

    Abstract: In response to the difficulty in diagnosing fault types due to the complexity and variability of gearbox fault signals under variable working conditions, a fault diagnosis method based on the Harris hawk optimizer (HHO) was proposed to optimize the multi-layer perceptron (MLP) neural network. Firstly, the method employed the root mean square-mean (RMS-MEAN) method for data preprocessing of different fault vibration signals of the gearbox, reducing the impact of random working conditions on the vibration signals. Secondly, a variable working condition correction factor k was introduced into the HHO to automatically optimize the hyperparameters of the MLP under variable working conditions, enhancing the periodic characteristics in the vibration signals, and constructing the optimal structure of the variable working condition MLP model. Finally, the feature enhancement data was input into HHO-MLP for fault diagnosis. According to the MCC5-THU gearbox fault data set, the fault diagnosis performance of the proposed method is significantly better than other models under varying working conditions, and the accuracy rate of fault classification can reach 97.5%, which shows its effectiveness under varying working conditions.

     

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