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A comparison between two conventional order tracking techniques in rotating machine diagnostics

机译:旋转机械诊断中两种常规顺序跟踪技术的比较

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Conventional rotating machine vibration monitoring techniques are based on the assumption that changes in the measured structural response are caused by deterioration in the condition of the rotating machine. However, due to variations of the rotational speed, the measured signal many be non-stationary and difficult to interpret. For this reason, the order tracking technique is introduced to identify non-stationary vibration data and to a large extent exclude the influences of varying rotational speed. In recent years, different order tracking techniques have been developed in the context of condition monitoring rotating machines. Each of these techniques has their own pros and cons in analyzing rotating machinery vibration signals. This, however, presents difficulties for the analyst in choosing and applying proper order tracking methods. In this paper, two widely researched order tracking techniques, computed order tracking and Vold-Kalman filter order tracking, are extensively discussed and compared in their abilities and limitations which include the form of the results, issues with respect to practical application procedures, computational effort, etc. The paper is useful for the selection of appropriate order tracking methods and efficient application of the techniques in rotating machine fault diagnostics.
机译:传统的旋转机振动监测技术基于这样的假设,即所测量的结构响应的变化是由旋转机状态的恶化引起的。然而,由于转速的变化,被测信号很多是不平稳的并且难以解释。因此,引入了阶次跟踪技术来识别非平稳振动数据,并在很大程度上消除了转速变化的影响。近年来,已经在状态监视旋转机的背景下开发了不同的订单跟踪技术。这些技术中的每一种在分析旋转机械振动信号时都有其优缺点。但是,这给分析人员在选择和应用适当的订单跟踪方法时带来了困难。在本文中,对两种广泛研究的订单跟踪技术,即计算订单跟踪和Vold-Kalman滤波器订单跟踪进行了广泛的讨论,并比较了它们的能力和局限性,包括结果的形式,与实际应用程序有关的问题,计算工作量本文对于选择合适的顺序跟踪方法以及将该技术有效地应用于旋转机械故障诊断中很有用。

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