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Machine Fault Classification Based on Local Discriminant Bases and Locality Preserving Projections

机译:基于局部判别基础和地方保存预测的机器故障分类

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Machine fault classification is an important task for intelligent identification of the health patterns for a mechanical system being monitored. Effective feature extraction of vibration data is very critical to reliable classification of machine faults with different types and severities. In this paper, a new method is proposed to acquire the sensitive features through a combination of local discriminant bases (LDB) and locality preserving projections (LPP). In the method, the LDB is employed to select the optimal wavelet packet (WP) nodes that exhibit high discrimination from a redundant WP library of wavelet packet transform (WPT). Considering that the obtained discriminatory features on these selected nodes characterize the class pattern in different sensitivity, the LPP is then applied to address mining inherent class pattern feature embedded in the raw features. The proposed feature extraction method combines the merits of LDB and LPP and extracts the inherent pattern structure embedded in the discriminatory feature values of samples in different classes. Therefore, the proposed feature not only considers the discriminatory features themselves but also considers the dynamic sensitive class pattern structure. The effectiveness of the proposed feature is verified by case studies on vibration data-based classification of bearing fault types and severities.
机译:机器故障分类是用于监控机械系统的健康模式的重要任务。振动数据的有效特征提取对于具有不同类型和严重程度的机器故障的可靠分类非常重要。在本文中,提出了一种新方法来通过局部判别基础(LDB)和位置保存投影(LPP)的组合来获取敏感特征。在该方法中,使用LDB来选择从小波包变换(WPT)的冗余WP库中表现出高分辨率的最佳小波分组(WP)节点。考虑到所选择的节点上获得的歧视性功能表征了不同灵敏度的类模式,然后将LPP应用于地址嵌入在原始特征中的挖掘固有类模式特征。所提出的特征提取方法结合了LDB和LPP的优点,并提取了嵌入在不同类别的样本的鉴别特征值中的固有模式结构。因此,所提出的功能不仅考虑歧视性特征,而且还考虑动态敏感类模式结构。通过关于轴承故障类型和严重程度的基于振动数据的分类来验证所提出的特征的有效性。

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