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首页> 外文期刊>IEEE transactions on industrial informatics >Manifold Sensing-Based Convolution Sparse Self-Learning for Defective Bearing Morphological Feature Extraction
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Manifold Sensing-Based Convolution Sparse Self-Learning for Defective Bearing Morphological Feature Extraction

机译:基于歧管的感应卷积稀疏自学习造成轴承形态特征提取

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摘要

The transient features caused by a local fault are of vital importance for bearing fault diagnosis in an intelligent industry. Due to the uncertainty of fault forms and nonstationarity of operating conditions, the fault feature distribution influenced by the physical dynamic response of actual defect is always complex and irregular with morphological differences. This will bring embarrassments for an accurate fault diagnosis. Motivated by this, a convolution sparse self-learning (CSSL) is proposed in this article to accomplish an adaptive feature enhancement. In the view of image sparse processing, the representation for desired morphological structures is promoted by a two-dimensional optimizing approach with manifold sensing. From a randomly selected fragment, the time-frequency manifold learning is first applied to mine the latent structures. The image entropy is then introduced to adaptively output the optimal one as a sensing kernel. Therewith, this kernel is used to operate a shift-invariant sparse analysis on raw time-frequency image. Combining this rebuilt image with the raw phase, an enhanced signal is finally synthesized. In this manner, the desired transient morphology can be automatically mined, which is consistent with the physical dynamic response. Practical defective bearing data are analyzed to illustrate the effectiveness of the proposed method. Specifically, a comparison further illustrates that the proposed CSSL is superior in the morphological transient features enhancement.
机译:由本地故障引起的瞬态特征对于智能行业的轴承故障诊断至关重要。由于故障形式的不确定性和操作条件的非间转性,受到实际缺陷的物理动态响应影响的故障特征分布始终是复杂的和不规则的形态差异。这将为准确的故障诊断带来尴尬。由此引进,在本文中提出了一种稀疏自学习(CSSL)来完成自适应特征增强。在图像稀疏处理的视图中,通过具有歧管感测的二维优化方法来促进所需形态结构的表示。从随机选择的片段,首先应用时间频率歧管学习来挖掘潜在结构。然后引入图像熵以自适应地将最佳输出作为感测内核。因此,该内核用于在原始时频图像上操作换档不变稀疏分析。将此重建图像与原始阶段相结合,最终合成增强的信号。以这种方式,可以自动开采所需的瞬态形态,这与物理动态响应一致。分析了实用缺陷的轴承数据以说明所提出的方法的有效性。具体地,比较进一步说明了所提出的CSSL在形态瞬态特征增强中优异。

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