基于相似度的机械健康监测时同步平均振动信号建模

S. Wegerich
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引用次数: 52

摘要

对旋转机械的监测通常借助于振动传感器来完成。振动传感器信号包含丰富的复杂信息,这些信息表征了机械的动态行为。由于存在外来噪声源和振动信号本身的变化,将这些信息转化为有关机器健康状况的有用知识可能具有挑战性。在不同负载和/或速度下监测旋转机械的情况下尤其如此。为了使获得的任何关于机器健康状况的知识或见解有用,它必须是可操作的。这是通过尽可能早地检测早期故障来实现的。本文提出了一种新的振动监测方法,该方法采用基于多变量相似性的建模(SBM)技术来表征时间同步平均频谱特征的预期行为,从而能够在旋转机械中进行检测。这反过来又促进了对机器健康状况的评估,并使故障诊断和最终预测成为可能。SBM已成功应用于各种与非振动相关的多传感器、健康监测应用。我们的新方法建立在这些经验的基础上,结合信号处理算法,将SBM的整体适用性扩展到单传感器振动监测。讨论了一种基于振动数据和SBM的齿轮箱故障监测方法。本文详细描述了这种新方法,并将其应用于美国海军航空系统司令部(NAVAIR)于2001年和2002年在马里兰州帕塔克森特河的直升机传输测试设施(HTTF)进行的种子故障测试中获得的实际H-60齿轮箱振动数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Similarity based modeling of time synchronous averaged vibration signals for machinery health monitoring
Monitoring rotating machinery is often accomplished with the aid of vibration sensors. The vibration sensor signals contain a wealth of complex information that characterizes the dynamic behavior of the machinery. Transforming this information into useful knowledge about the health of the machine can be challenging due to the presence of extraneous noise sources and variations in the vibration signal itself. This is particularly true in situations in which the rotating machinery is monitored under varying loads and/or speeds. In order for any gained knowledge or insight into the health of machinery to be useful, it must be actionable. This is achieved by detecting incipient faults as early as possible. A novel approach to vibration monitoring that employs a multivariate similarity-based modeling (SBM) technique to characterize the expected behavior of time synchronous averaged spectral features is shown to enable the detection in rotating machinery. This in turn facilitates the assessment of machine health and enables fault diagnostics and ultimately prognostics. SBM has been applied successfully to a variety of non-vibration related multi-sensor, health monitoring applications. Our new approach builds off of these experiences and a combination of signal processing algorithms to expand the overall applicability of SBM into single sensor vibration monitoring. We discuss an approach to gearbox fault monitoring using vibration data and SBM. This new approach is described in detail and is applied to actual H-60 gearbox vibration data acquired from seeded fault tests conducted by U.S. Naval Air Systems Command (NAVAIR) at the Helicopter Transmission Test Facility (HTTF) in Patuxent River, MD in 2001 and 2002.
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