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Degradation-based maintenance decision using stochastic filtering for systems under imperfect maintenance

机译:在维护不完善的情况下,使用随机过滤对系统进行基于降级的维护决策

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摘要

The notion of imperfect maintenance has spawned a large body of literature, and many imperfect maintenance models have been developed. However, there is very little work on developing suitable imperfect maintenance-models for systems outfitted with sensors. Motivated by the practical need of such imperfect maintenance models, the broad objective of this paper is to propose an imperfect maintenance model that is applicable to systems whose sensor information can be modeled by stochastic processes. The proposed imperfect maintenance model is founded on the intuition that maintenance actions will change the rate of deterioration of a system, and that each maintenance action should have a different degree of impact on the rate of deterioration. The corresponding parameter-estimation problem can be divided into two parts: the estimation of fixed model parameters and the estimation of the impact of each maintenance action on the rate of deterioration. The quasi-Monte Carlo method is utilized for estimating fixed model parameters, and the filtering technique is utilized for dynamically estimating the impact from each maintenance action. The competence and robustness of the developed methods are evidenced via simulated data, and the utility of the proposed imperfect maintenance model is revealed via a real data set. (C) 2015 Elsevier B.V. All rights reserved.
机译:不完善维护的概念催生了大量文献,并且已经开发了许多不完善维护模型。但是,为配备传感器的系统开发合适的不完善维护模型的工作很少。出于这种不完善维护模型的实际需求,本文的主要目的是提出一种不完善维护模型,该模型适用于传感器信息可以通过随机过程建模的系统。提出的不完善维护模型是基于这样的直觉,即维护措施会改变系统的恶化率,并且每个维护措施都应该对恶化率产生不同程度的影响。相应的参数估计问题可分为两部分:固定模型参数的估计和每种维护措施对劣化率的影响的估计。准蒙特卡罗方法用于估计固定模型参数,而滤波技术用于动态估计每个维护操作的影响。通过仿真数据证明了所开发方法的能力和鲁棒性,并通过真实数据集揭示了所提出的不完善维护模型的实用性。 (C)2015 Elsevier B.V.保留所有权利。

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