Simulation of Bearing Degradation by the Use of the Gamma Stochastic Process

Hanene Louahem M’Sabah, A. Bouzaouit, O. Bennis
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引用次数: 1

Abstract

Abstract An effective predictive maintenance reposed on modeling, simulation, and on supervisory and prognostic techniques used to model the various phenomena. On this basis, and based on significant knowledge and parameters, we propose an approach based on stochastic processes that represent a mathematical structure for simulation, mainly the processes of continuous degradation and more particularly the Gamma process. Our work is devoted to the monitoring of the degradation process of the bearings at the level of a motor pump and makes it possible to evaluate the limiting operating time, as well as the evolution in time of the change of state. This methodology allows us to develop a mathematical model that describes the process of bearing degradation, thus providing a good prediction of failures and efficient maintenance planning for systems whose behavior is only partially predictable.
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用伽玛随机过程模拟轴承退化
有效的预测性维护依赖于建模、仿真以及用于模拟各种现象的监督和预测技术。在此基础上,基于重要的知识和参数,我们提出了一种基于随机过程的方法,该方法代表了模拟的数学结构,主要是连续退化过程,特别是伽马过程。我们的工作是致力于监测电机泵水平轴承的退化过程,并使其能够评估极限运行时间,以及状态变化的时间演变。这种方法使我们能够开发一个描述轴承退化过程的数学模型,从而为其行为仅部分可预测的系统提供良好的故障预测和有效的维护计划。
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Mechanics and Mechanical Engineering
Mechanics and Mechanical Engineering Engineering-Automotive Engineering
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