用于轴承故障检测和识别的鲁棒多元统计集成

Jamie L. Godwin, Peter C. Matthews, Christopher Watson
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引用次数: 6

摘要

本文提出了一种基于6205-2RS JEM SKF轴承高频轴承数据的故障识别与检测方法。马氏距离的鲁棒导数被用来准确和精确地封装各种故障行为,然后可以用于故障检测和识别的目的。可以将失效模式和影响分析(FMEA)形式的领域知识纳入模型,以确定潜在的失效模式。采用种子故障数据推导出故障的形状和位置估计,以实现多变量距离函数的使用。为了降低计算复杂度,同时提高对故障的敏感性,将高频(48KHz)加速度计数据预处理成由偏度、峰度、均方根(RMS)和香农熵组成的4元组。这个4元组被证明可以封装和区分通过FMEA识别的所有故障模式,同时将数据减少到1Hz,允许使用精确和元启发式算法进行鲁棒分析。该技术能够准确识别0.007”直径的内滚圈、外滚圈和滚子元件故障,这些故障是通过电火花加工而播种到轴承上的。为了证明该方法的实用性,训练后的系统被用于分析在不同条件下收集的独立数据集。结果表明,该技术能够在灾难性故障发生前,准确地检测和识别相关的故障模式,使轴承寿命剩余28.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust multivariate statistical ensembles for bearing fault detection and identification
This paper presents a novel methodology for the identification and detection of faults on based upon high frequency bearing data collected from a 6205-2RS JEM SKF bearing. A robust derivative of the Mahalanobis distance is employed to accurately and precisely encapsulate varying fault behaviours, which can then be exploited for the purposes of fault detection and identification. Domain knowledge in the form of failure mode and effect analysis (FMEA) can be incorporated into the model, to determine potential failure modes. Seeded fault data was employed to derive the shape and location estimates to enable the use of a multivariate distance function. To reduce the computational complexity whilst simultaneously increasing sensitivity to the faults, the high frequency (48KHz) accelerometer data was pre-processed into a 4-tuple consisting of the Skewness, Kurtosis, Root mean square (RMS) and Shannon Entropy. This 4-tuple is shown to encapsulate and discriminate all fault modes identified through the FMEA, whilst reducing the data to 1Hz, allowing for the both exact, and meta-heuristic algorithms to be employed for robust analysis. Sensitivity to minimal fault development is demonstrated, with the technique accurately identifying 0.007" diameter inner race, outer race and roller element faults which had been seeded to the bearing through electro-discharge machining. To demonstrate the practicalities of the approach, the trained system is employed for analysis of an independent dataset, collected under different conditions. The technique is shown to accurately detect and identify the relevant fault mode pre-emptively, before catastrophic failure occurred, with 28.6% of bearing life remaining.
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