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A data mining approach for fault diagnosis: An application of anomaly detection algorithm

机译:一种用于故障诊断的数据挖掘方法:异常检测算法的应用

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摘要

Rolling-element bearing failures are the most frequent problems in rotating machinery, which can be catastrophic and cause major downtime. Hence, providing advance failure warning and precise fault detection in such components are pivotal and cost-effective. The vast majority of past research has focused on signal processing and spectral analysis for fault diagnostics in rotating components. In this study, a data mining approach using a machine learning technique called anomaly detection (AD) is presented. This method employs classification techniques to discriminate between defect examples. Two features, kurtosis and Non-Gaussianity Score (NGS), are extracted to develop anomaly detection algorithms. The performance of the developed algorithms was examined through real data from a test to failure bearing. Finally, the application of anomaly detection is compared with one of the popular methods called Support Vector Machine (SVM) to investigate the sensitivity and accuracy of this approach and its ability to detect the anomalies in early stages.
机译:滚动轴承的故障是旋转机械中最常见的问题,可能是灾难性的,并导致严重的停机。因此,在此类组件中提供预先的故障警告和精确的故障检测至关重要且具有成本效益。过去的绝大多数研究都集中在信号处理和频谱分析上,以进行旋转组件的故障诊断。在这项研究中,提出了一种使用机器学习技术(称为异常检测(AD))的数据挖掘方法。该方法采用分类技术来区分缺陷示例。提取峰度和非高斯得分(NGS)这两个特征来开发异常检测算法。通过从测试到失效承担的真实数据检查了开发算法的性能。最后,将异常检测的应用与一种称为支持向量机(SVM)的流行方法进行了比较,以研究此方法的敏感性和准确性以及其在早期阶段检测异常的能力。

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