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A new approach to detection of defects in rolling element bearings based on statistical pattern recognition

机译:基于统计模式识别的滚动轴承缺陷检测新方法

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The paper presents a new approach to the classification of rolling element bearing faults by implementing statistical pattern recognition. Diagnostics of rolling element bearing faults actually represents the problem of pattern classification and recognition, where the key step is feature extraction from the vibration signal. Characterization of each recorded vibration signal is performed by a combination of signal's time-varying statistical parameters and characteristic rolling element bearing fault frequency components obtained through the envelope analysis method. In this way, an 18-dimensional vector of the vibration signal feature is obtained. Dimension reduction of the 18-dimensional feature vectors was performed afterward into two-dimensional vectors representing the training set for the design of parameter classifiers. The classification was performed in two classes, into defective and functional rolling element bearings. Main trait of parameter classifiers is simplicity in their design process, as opposed to classifiers based on neural networks, which employ complex training algorithms.
机译:通过实现统计模式识别,提出了一种滚动轴承故障分类的新方法。滚动轴承故障的诊断实际上代表着模式分类和识别的问题,其中关键步骤是从振动信号中提取特征。每个记录的振动信号的表征是通过信号的时变统计参数和通过包络分析法获得的带有故障频率分量的特征滚动元件的组合来进行的。这样,获得了振动信号特征的18维矢量。随后将18维特征向量的维数缩减为代表用于参数分类器设计的训练集的二维向量。分类分为有缺陷的滚动轴承和有功能的滚动轴承两类。与基于神经网络的分类器采用复杂的训练算法相比,参数分类器的主要特点是设计过程简单。

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