Learning-Based Diagnosis of Multiple Faults in Bearings

Udeme Inyang, I. Petrunin, I. Jennions
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Abstract

Reliable diagnostic framework must have the ability to deal with many diagnostic conditions, including the cases of multiple faults in bearings. Timely and reliable fault detection and assessment in such cases are of utmost importance for the prevention of missed detections, inadequate maintenance, and loss of profits due to failures. The problems of multiple fault diagnosis attracted relatively little attention in the literature on the background of common interest to improvements in single fault diagnosis. Multiple fault diagnosis has additional, in comparison to single fault diagnosis, challenges: submergence of the weak fault by the strong fault, overlap of vibration characteristics in time and frequency domains, coupling of frequency components and so on. To address these challenges, several solutions were proposed, including those based on artificial intelligence. However, majority of intelligent methods relied on manual feature extraction based on prior information of the faults and a new problem usually requires a new design of the feature extractor. Deep learning is a promising tool to cope with known challenges of commonly proposed intelligent methods. This paper presents a new learning-based framework to improve the efficiency of the fault diagnosis in the case of multiple faults of bearings. Deep learning integrated into the framework helps to overcome the challenges of manual feature engineering, while maintaining good diagnostic efficiency. Inputs to the classification stage are presented by versions of the dataset using generic signal processing techniques. Results from this method demonstrate promising outcomes in the detection and classification of multiple faults.
基于学习的轴承多故障诊断
可靠的诊断框架必须具有处理许多诊断条件的能力,包括轴承多个故障的情况。在这种情况下,及时可靠的故障检测和评估对于防止漏检、维护不足和因故障造成的利润损失至关重要。在人们普遍关注改进单故障诊断的背景下,多故障诊断问题在文献中受到的关注相对较少。与单故障诊断相比,多故障诊断还面临着弱故障被强故障淹没、振动特征在时频域重叠、频率分量耦合等挑战。为了应对这些挑战,提出了几种解决方案,包括基于人工智能的解决方案。然而,大多数智能方法依赖于基于故障先验信息的人工特征提取,并且新问题通常需要重新设计特征提取器。深度学习是一种很有前途的工具,可以应对通常提出的智能方法的已知挑战。为了提高轴承多故障情况下的故障诊断效率,提出了一种新的基于学习的故障诊断框架。将深度学习集成到框架中有助于克服人工特征工程的挑战,同时保持良好的诊断效率。分类阶段的输入由使用通用信号处理技术的数据集版本呈现。结果表明,该方法在多故障的检测和分类中取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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