A Hierarchical Fault Diagnosis Model for Planetary Gearbox with Shift-invariant Dictionary and OMPAN

Ronghua Chen, Yingkui Gu, Peng Huang, Junjie Chen, Guangqi Qiu
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Abstract

Planetary gearbox has been widely applied in the mechanical transmission system, and the failure types of planetary gearbox are more and more diversified. The conventional fault diagnosis methods focus on identifying the faults in the fault library, but ignored the faults outside the fault library. However, it is impossible to build a fault library for all failure types. Targeting the problem of identifying the faults outside the fault library, a hierarchical fault diagnosis method for planetary gearbox with shift-invariant dictionary and orthogonal matching pursuit with adaptive noise (OMPAN) is proposed in this paper. By k-means singular value decomposition (K-SVD) dictionary learning method and shift-invariant strategy, a shift-invariant dictionary is constructed so that the normal modulation components of signals can be completed decomposed. OMPAN algorithm is proposed, which uses the white Gaussian noise to improve the solution method of the orthogonal matching pursuit (OMP) algorithm so that it can separate the modulation components in the signal more accurately. The fault feature extraction is developed via shift-invariant dictionary and OMPAN. A hierarchical classifier is proposed with 3 sub-classifiers so that both the faults in the fault library and the faults outside the fault library are identified. The effectiveness of the proposed hierarchical fault diagnosis method is validated by a planetary gearbox experiment. Result show that the proposed shift-invariant dictionary and OMPAN method has achieved a superior performance in highlighting fault features compared with other two sparse decomposition methods. The proposed hierarchical fault diagnosis approach has achieved a good performance both in classification of the faults in the fault library and identification of the faults outside the fault library.
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使用移位变量词典和 OMPAN 的行星齿轮箱分层故障诊断模型
行星齿轮箱在机械传动系统中得到了广泛应用,行星齿轮箱的故障类型也越来越多样化。传统的故障诊断方法侧重于识别故障库中的故障,而忽略了故障库之外的故障。然而,要建立一个涵盖所有故障类型的故障库是不可能的。针对识别故障库之外故障的问题,本文提出了一种行星齿轮箱分层故障诊断方法,该方法采用移位不变字典和带自适应噪声的正交匹配追求(OMPAN)。通过 K-means 奇异值分解(K-SVD)字典学习方法和移位不变策略,构建了移位不变字典,从而完成对信号正常调制成分的分解。提出了 OMPAN 算法,该算法利用白高斯噪声改进了正交匹配追求(OMP)算法的求解方法,从而能更准确地分离信号中的调制成分。通过移位不变字典和 OMPAN 开发了故障特征提取方法。提出的分层分类器包含 3 个子分类器,这样既能识别故障库中的故障,也能识别故障库之外的故障。通过行星齿轮箱实验验证了所提出的分层故障诊断方法的有效性。结果表明,与其他两种稀疏分解方法相比,所提出的移位不变字典和 OMPAN 方法在突出故障特征方面表现出色。所提出的分层故障诊断方法在故障库中的故障分类和故障库外的故障识别方面都取得了良好的性能。
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