基于振动传感器数据的轴承和旋转机械故障检测

Thanasis Kotsiopoulos, T. Vafeiadis, Aristeidis Apostolidis, Alexandros Nizamis, Nikolaos Alexopoulos, D. Ioannidis, D. Tzovaras, P. Sarigiannidis
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引用次数: 2

摘要

在这项工作中,比较研究了已知的故障检测技术,局部离群因子和隔离森林,以及提出了一种称为标准化马氏距离的方法。研究重点是利用振动传感器的数据对轴承和旋转机械进行故障检测。在实验的第一阶段,通过获得旋转机器的振动信号,在实验室创建的数据集上使用交叉验证来应用和评估所有模型。在第二阶段,包括所提出的异常值检测技术在内的异常值检测技术在一个流行的公共数据集上进行应用和评估。在这两个阶段中,为了找到每种技术的最有效集合,测试了各种参数的组合。评价结果表明,在异常状态电压值不接近标称电压值的情况下,标准化马氏距离方法在旋转机械电压降故障检测上优于局部离群因子和隔离森林方法。此外,来自公共数据集的评估结果表明,标准化马氏距离能够在轴承发生外圈故障之前识别出异常值,比局部异常值因子和隔离森林模型更有效和可靠。建议的方法也应用于主要电梯制造商的实际场景,使用定制的振动传感器,目前正在进一步评估中。
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Fault Detection on Bearings and Rotating Machines based on Vibration Sensors Data
In this work a comparative study among the known fault detection techniques Local Outlier Factor and Isolation Forest as well as a proposed methodology called Standardised Mahalanobis Distance is presented. The study is focusing on the challenging problem of fault detection on bearings and rotating machines using vibration sensors’ data. During the first phase of the experiments, all models are applied and evaluated using cross-validation on a dataset created in lab by obtaining vibration signals of a rotating machine. In the second phase, the outlier detection techniques including the proposed one, are applied and evaluated on a popular, public dataset. In both phases, various parameters’ combinations are tested in order to find the most efficient set for each technique. As can been derived by the evaluation results, the Standardised Mahalanobis Distance methodology outperforms Local Outlier Factor and Isolation Forest on fault detection on voltage drop down of rotating machines in the case the voltage value of the abnormal condition is not close to the nominal. In addition, the evaluation results from the public dataset indicate that Standardised Mahalanobis Distance is able to identify outliers before an outer race fault on a bearing occurs, in a more efficient and solid way than Local Outlier Factor and Isolation Forest models. The proposed approach is applied also on a real world scenario in the premises of major lift manufacturer, using custom vibration sensors and it is currently under further evaluation.
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