首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part O. Journal of Risk and Reliability >A dynamic Bayesian network approach for prognosis computations on discrete state systems
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A dynamic Bayesian network approach for prognosis computations on discrete state systems

机译:用于离散状态系统预后计算的动态贝叶斯网络方法

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The maintenance optimization of complex systems is a key question. One important objective is to be able to anticipate future maintenance actions required to optimize the logistic and future investments. That is why, over the past few years, the predictive maintenance approaches have been an expanding area of research. They rely on the concept of prognosis. Many papers have shown how dynamic Bayesian networks can be relevant to represent multicomponent complex systems and carry out reliability studies. The diagnosis and maintenance group from French institute of science and technology for transport, development and networks (IFSTTAR) developed a model (VirMaLab: Virtual Maintenance Laboratory) based on dynamic Bayesian networks in order to model a multicomponent system with its degradation dynamic and its diagnosis and maintenance processes. Its main purpose is to model a maintenance policy to be able to optimize the maintenance parameters due to the use of dynamic Bayesian networks. A discrete state-space system is considered, periodically observable through a diagnosis process. Such systems are common in railway or road infrastructure fields. This article presents a prognosis algorithm whose purpose is to compute the remaining useful life of the system and update this estimation each time a new diagnosis is available. Then, a representation of this algorithm is given as a dynamic Bayesian network in order to be next integrated into the Virtual Maintenance Laboratory model to include the set of predictive maintenance policies. Inference computation questions on the considered dynamic Bayesian networks will be discussed. Finally, an application on simulated data will be presented.
机译:复杂系统的维护优化是一个关键问题。一个重要目标是能够预测未来的维护行动,以优化物流和未来的投资。这就是为什么在过去几年中,预测性维护方法一直是一个扩大的研究领域。他们依靠预后的概念。许多论文已经表明,动态贝叶斯网络如何与代表多组分复杂系统相关,并进行可靠性研究。法国科技学院运输,开发和网络研究所(IFSTTAR)诊断和维护组(如果STTAR)开发了一种基于动态贝叶斯网络的模型(Virmalab:虚拟维护实验室),以模拟具有其降解动态及其诊断的多组分系统和维护过程。其主要目的是建模维护策略,以便由于使用动态贝叶斯网络而优化维护参数。通过诊断过程定期观察离散状态空间系统。这种系统在铁路或道路基础设施领域是常见的。本文提出了一种预后算法,其目的是计算系统的剩余使用寿命,并每次使用新诊断时更新此估计。然后,将该算法的表示作为动态贝叶斯网络给出,以便下一步集成到虚拟维护实验室模型中,以包括该集预测性维护策略。将讨论考虑动态贝叶斯网络上的推理计算问题。最后,将提出模拟数据的应用程序。

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