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Kurtosis based weighted sparse model with convex optimization technique for bearing fault diagnosis

机译:基于凸度的峰度加权稀疏模型用于轴承故障诊断

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The bearing failure, generating harmful vibrations, is one of the most frequent reasons for machine breakdowns. Thus, performing bearing fault diagnosis is an essential procedure to improve the reliability of the mechanical system and reduce its operating expenses. Most of the previous studies focused on rolling bearing fault diagnosis could be categorized into two main families, kurtosis-based filter method and wavelet-based shrinkage method. Although tremendous progresses have been made, their effectiveness suffers from three potential drawbacks: firstly, fault information is often decomposed into proximal frequency bands and results in impulsive feature frequency band splitting (IFFBS) phenomenon, which significantly degrades the performance of capturing the optimal information band; secondly, noise energy spreads throughout all frequency bins and contaminates fault information in the information band, especially under the heavy noisy circumstance; thirdly, wavelet coefficients are shrunk equally to satisfy the sparsity constraints and most of the feature information energy are thus eliminated unreasonably. Therefore, exploiting two pieces of prior information (i.e., one is that the coefficient sequences of fault information in the wavelet basis is sparse, and the other is that the kurtosis of the envelope spectrum could evaluate accurately the information capacity of rolling bearing faults), a novel weighted sparse model and its corresponding framework for bearing fault diagnosis is proposed in this paper, coined KurWSD. KurWSD formulates the prior information into weighted sparse regularization terms and then obtains a nonsmooth convex optimization problem. The alternating direction method of multipliers (ADMM) is sequentially employed to solve this problem and the fault information is extracted through the estimated wavelet coefficients. Compared with state-of-the-art methods, KurWSD overcomes the three drawbacks and utilizes the advantages of both family tools. KurWSD has three main advantages: firstly, all the characteristic information scattered in proximal sub-bands is gathered through synthesizing those impulsive dominant sub-band signals and thus eliminates the dilemma of the IFFBS phenomenon. Secondly, the noises in the focused sub-bands could be alleviated efficiently through shrinking or removing the dense wavelet coefficients of Gaussian noise. Lastly, wavelet coefficients with faulty information are reliably detected and preserved through manipulating wavelet coefficients discriminatively based on the contribution to the impulsive components. Moreover, the reliability and effectiveness of the KurWSD are demonstrated through simulated and experimental signals.
机译:轴承故障(产生有害的振动)是机器故障的最常见原因之一。因此,进行轴承故障诊断是提高机械系统的可靠性并减少其运行费用的必要步骤。以往大多数针对滚动轴承故障诊断的研究可分为两个主要类别,基于峰度的滤波方法和基于小波的收缩方法。尽管已经取得了巨大的进步,但是其有效性却遭受三个潜在的缺点:首先,故障信息经常分解为近端频带,并导致脉冲特征频带分裂(IFFBS)现象,这大大降低了捕获最佳信息频带的性能。 ;其次,噪声能量散布在所有频率点上,并污染了信息频带中的故障信息,尤其是在嘈杂的噪声环境下。第三,小波系数均等地收缩以满足稀疏性约束,因此大部分特征信息能量被不合理地消除。因此,利用两个先验信息(即,一种是基于小波的故障信息的系数序列稀疏,另一种是包络谱的峰度可以准确地评估滚动轴承故障的信息容量),本文提出了一种新的加权稀疏模型及其对应的轴承故障诊断框架,称为KurWSD。 KurWSD将先验信息公式化为加权的稀疏正则化项,然后获得非光滑凸优化问题。依次采用交替方向乘数法(ADMM)解决此问题,并通过估计的小波系数提取故障信息。与最先进的方法相比,KurWSD克服了三个缺点,并利用了两个系列工具的优点。 KurWSD具有三个主要优点:首先,通过合成那些脉冲性主导子带信号来收集散布在近端子带中的所有特征信息,从而消除了IFFBS现象的困境。其次,通过缩小或去除高斯噪声的密集小波系数,可以有效地缓解聚焦子带中的噪声。最后,基于对脉冲分量的贡献,通过区分性地处理小波系数,可以可靠地检测和保留具有错误信息的小波系数。此外,通过仿真和实验信号证明了KurWSD的可靠性和有效性。

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