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Using dynamic Bayesian networks for prognostic modelling to inform maintenance decision making

机译:使用动态贝叶斯网络进行预测建模以告知维护决策

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In this paper, we consider the application of dynamic Bayesian networks to the prognostic modelling of equipment in order to better inform maintenance decision-making. We provide a brief overview of Bayesian networks and their application to reliability modelling. An example is then provided in which an equipment is considered to be in one of six states and there are two imperfect condition monitoring indicators available to provide evidence about the equipment's true state which tends to deteriorate over time. With this example, we show how the equipment's reliability decays over time in the situation where repair is not possible and then how a simple change to the model allows us to represent different maintenance policies for repairable equipment.
机译:在本文中,我们考虑将动态贝叶斯网络应用于设备的预测模型,以便更好地为维护决策提供依据。我们简要概述了贝叶斯网络及其在可靠性建模中的应用。然后提供一个示例,其中设备被视为处于六个状态之一,并且有两个不完善的状态监视指示器可用来提供有关设备真实状态的证据,该状态会随着时间的流逝而恶化。通过此示例,我们显示了在无法维修的情况下设备的可靠性如何随时间而下降,然后通过简单的模型更改就可以代表可维修设备的不同维护策略。

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