EXPLORING BEARING ROOT MEAN SQUARE FIRST PASSAGE TIME BASED ON INVERSE GAUSSIAN DISTRIBUTION

S. Darwis, N. Hajarisman, S. Suliadi, A. Widodo
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Abstract

: Bearing becomes a critical rotational component in mechanical system, and its condition will affect the system. It is essential to predict bearing lifetime through acquisition and process degradation prediction. Vibration data contain information bearing degradation, and analysis based on this information is frequently applied in bearing prognostic. Proper models should be developed in order to find the relationship between degradation process and covariates. First passage time is a critical parameter in Brownian motion representing the time point when degradation curve passes through the failure for the first time, which equals to lifetime of the bearing. It is a random process that follows the inverse Gaussian distribution. This paper explores the application of first passage time of bearing vibration using bearing lifetime and operating condition as covariate. The lifetime data is extracted from bearing vibration data PHM Pronostia FEMTO database. The research methodology consist of inverse Gaussian parameter estimation, and interpretation of reliability of first passage analysis of operating condition.
基于反高斯分布的轴承均方根首次通过时间研究
轴承成为机械系统中重要的转动部件,其状态将影响整个系统。通过采集和工艺退化预测来预测轴承寿命是至关重要的。振动数据中包含轴承退化的信息,基于这些信息的分析经常用于轴承的预测。为了找到退化过程与协变量之间的关系,需要建立适当的模型。首次通过时间是布朗运动中的一个关键参数,表示退化曲线首次通过失效点的时间点,相当于轴承的寿命。它是一个服从逆高斯分布的随机过程。本文以轴承寿命和工况为协变量,探讨了轴承振动首次通过时间的应用。寿命数据提取自轴承振动数据PHM Pronostia FEMTO数据库。研究方法包括反高斯参数估计和运行工况首道分析的可靠性解释。
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