Liu Chang, Wang Guofeng, Xie Qinglu, Zhang Yanchao
Key Laboratory of Mechanism Theory and Equipment Design of Ministry of Education, Tianjin University, Tianjin 300072, China.
Sensors (Basel). 2014 Jun 16;14(6):10598-618. doi: 10.3390/s140610598.
Effective fault classification of rolling element bearings provides an important basis for ensuring safe operation of rotating machinery. In this paper, a novel vibration sensor-based fault diagnosis method using an Ellipsoid-ARTMAP network (EAM) and a differential evolution (DE) algorithm is proposed. The original features are firstly extracted from vibration signals based on wavelet packet decomposition. Then, a minimum-redundancy maximum-relevancy algorithm is introduced to select the most prominent features so as to decrease feature dimensions. Finally, a DE-based EAM (DE-EAM) classifier is constructed to realize the fault diagnosis. The major characteristic of EAM is that the sample distribution of each category is realized by using a hyper-ellipsoid node and smoothing operation algorithm. Therefore, it can depict the decision boundary of disperse samples accurately and effectively avoid over-fitting phenomena. To optimize EAM network parameters, the DE algorithm is presented and two objectives, including both classification accuracy and nodes number, are simultaneously introduced as the fitness functions. Meanwhile, an exponential criterion is proposed to realize final selection of the optimal parameters. To prove the effectiveness of the proposed method, the vibration signals of four types of rolling element bearings under different loads were collected. Moreover, to improve the robustness of the classifier evaluation, a two-fold cross validation scheme is adopted and the order of feature samples is randomly arranged ten times within each fold. The results show that DE-EAM classifier can recognize the fault categories of the rolling element bearings reliably and accurately.
滚动轴承的有效故障分类为确保旋转机械的安全运行提供了重要依据。本文提出了一种基于振动传感器的新型故障诊断方法,该方法使用椭球自适应共振映射网络(EAM)和差分进化(DE)算法。首先基于小波包分解从振动信号中提取原始特征。然后,引入最小冗余最大相关算法来选择最突出的特征,以降低特征维度。最后,构建基于DE的EAM(DE-EAM)分类器来实现故障诊断。EAM的主要特点是通过使用超椭球节点和平滑运算算法来实现每个类别的样本分布。因此,它可以准确地描绘离散样本的决策边界,并有效避免过拟合现象。为了优化EAM网络参数,提出了DE算法,并同时引入分类准确率和节点数这两个目标作为适应度函数。同时,提出了一种指数准则来实现最优参数的最终选择。为了验证所提方法的有效性,采集了不同载荷下四种滚动轴承的振动信号。此外,为了提高分类器评估的鲁棒性,采用了双折交叉验证方案,并且在每一折中对特征样本的顺序随机排列十次。结果表明,DE-EAM分类器能够可靠、准确地识别滚动轴承的故障类别。