论文标题
用于监测和故障诊断的滚动轴承的混合方法,系统延迟较低
A Hybrid Method for Condition Monitoring and Fault Diagnosis of Rolling Bearings With Low System Delay
论文作者
论文摘要
基于振动的状态监测技术通常用于检测和诊断滚动轴承的故障。准确性和延迟检测和诊断不同类型的故障是条件监测中的主要绩效指标。通过低延迟获得高精度可以提高系统的可靠性,并防止灾难性设备故障。此外,延迟对于遥控状态监控和时间敏感的工业应用至关重要。尽管大多数提出的方法都集中在准确性上,但对解决条件监控过程中引入的延迟的限制非常关注。在本文中,我们试图弥合这一差距,并提出了一种混合方法,用于基于振动的状态监测和滚动轴承的故障诊断,该方法在准确性和延迟方面胜过以前的方法。具体而言,我们解决了基于振动的状况监测系统的总体延迟,并介绍了系统延迟的概念以评估它。然后,我们介绍提出的条件监测方法。它使用小波数据包变换(WPT)和傅立叶分析将振动信号的短变量输入段分解为基本波形并获得其光谱内容。因此,通过缺陷引起的瞬时振动引起的光谱成分中的能量浓度 - 用于提取具有较高歧视能力的少数特征。因此,基于贝叶斯优化的随机森林(RF)算法用于在不同的运动速度下对健康和错误的工作条件进行分类。实验结果表明,所提出的方法可以在系统延迟较低的情况下达到高精度。
Vibration-based condition monitoring techniques are commonly used to detect and diagnose failures of rolling bearings. Accuracy and delay in detecting and diagnosing different types of failures are the main performance measures in condition monitoring. Achieving high accuracy with low delay improves system reliability and prevents catastrophic equipment failure. Further, delay is crucial to remote condition monitoring and time-sensitive industrial applications. While most of the proposed methods focus on accuracy, slight attention has been paid to addressing the delay introduced in the condition monitoring process. In this paper, we attempt to bridge this gap and propose a hybrid method for vibration-based condition monitoring and fault diagnosis of rolling bearings that outperforms previous methods in terms of accuracy and delay. Specifically, we address the overall delay in vibration-based condition monitoring systems and introduce the concept of system delay to assess it. Then, we present the proposed method for condition monitoring. It uses Wavelet Packet Transform (WPT) and Fourier analysis to decompose short-duration input segments of the vibration signal into elementary waveforms and obtain their spectral contents. Accordingly, energy concentration in the spectral components-caused by defect induced transient vibrations-is utilized to extract a small number of features with high discriminative capabilities. Consequently, Bayesian optimization-based Random Forest (RF) algorithm is used to classify healthy and faulty operating conditions under varying motor speeds. The experimental results show that the proposed method can achieve high accuracy with low system delay.