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Adaptive online dictionary learning for bearing fault diagnosis

机译:轴承故障诊断的自适应在线词典学习

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One of the most common parts to maintain system balance and support the various load in rotating machinery is the rolling element bearing. The breakdown of the element in bearings leads to inefficiency and sometimes catastrophic events across various industries. The main challenge over the last few years for fault diagnosis of bearings is the early detection of fault signature. In this paper, an adaptive online dictionary learning algorithm is developed for early fault detection of bearing elements. The dictionary is trained using a set of vibration signal from a heavily damaged bearing. The enveloped signal of the bearing is obtained using the Kurtogram and split into several sections. The K-SVD algorithm is implemented to the dictionaries corresponding to the enveloped signal. OMP is implemented with the calculated dictionaries to obtain the sparse representation of the testing signal. Then the envelope analysis is implemented to obtain the fault signal from the recovered signal by the dictionaries. The adaptive algorithm is added to the dictionary learning to update the dictionary based on newly acquired data with the weighted least square method. Without retraining the dictionaries using the K-SVD algorithm, the computation speed is significantly improved. The proposed algorithm is compared with a traditional dictionary learning algorithm to show the improvement in detection of new fault frequency and improved signal to noise ratio.
机译:保持系统平衡和支撑旋转机械中各种负载的最常见部件之一是滚动元件轴承。轴承中元素的细分导致各种行业的效率低下,有时灾难性事件。对轴承故障诊断的最近几年的主要挑战是早期发现故障签名。本文开发了一种自适应在线词典学习算法,用于轴承元件的早期故障检测。使用来自严重损坏轴承的一组振动信号进行培训。使用KurtoGram获得轴承的包络信号并分成几个部分。 K-SVD算法用于对应于包络信号的字典。通过计算的字典实现,以获得测试信号的稀疏表示。然后实现信封分析以通过字典从恢复的信号获取故障信号。自适应算法将被添加到字典学习中,以基于具有加权最小二乘法的新获取的数据来更新字典。如果不使用K-SVD算法再培训字典,则计算速度显着提高。将所提出的算法与传统的字典学习算法进行比较,以显示出现新故障频率和改善信噪比的检测的改进。

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