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INCORPORATING PRIOR BELIEF IN THE GENERAL PATH MODEL: A COMPARISON OF INFORMATION SOURCES

机译:在一般路径模型中包含优先信任:信息来源的比较

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The general path model (GPM) is one approach for performing degradation-based, or Type III, prognostics. The GPM fits a parametric function to the collected observations of a prognostic parameter and extrapolates the fit to a failure threshold. This approach has been successfully applied to a variety of systems when a sufficient number of prognostic parameter observations are available. However, the parametric fit can suffer significantly when few data are available or the data are very noisy. In these instances, it is beneficial to include additional information to influence the fit to conform to a prior belief about the evolution of system degradation. Bayesian statistical approaches have been proposed to include prior information in the form of distributions of expected model parameters. This requires a number of run-to-failure cases with tracked prognostic parameters; these data may not be readily available for many systems. Reliability information and stressor-based (Type I and Type II, respectively) prognostic estimates can provide the necessary prior belief for the GPM. This article presents the Bayesian updating framework to include prior information in the GPM and compares the efficacy of including different information sources on two data sets.
机译:通用路径模型(GPM)是一种用于执行基于退化的或III类预测的方法。 GPM将参数函数拟合到所收集的预后参数观察值,并将拟合值外推到故障阈值。当有足够数量的预后参数观察值时,此方法已成功应用于各种系统。但是,当很少有可用数据或数据非常嘈杂时,参数拟合将遭受重大损失。在这些情况下,包含其他信息以影响拟合以符合关于系统降级演变的先前信念是有益的。已经提出了贝叶斯统计方法以预期模型参数的分布形式包括先验信息。这就需要许多运行失败的案例并具有跟踪的预后参数。这些数据可能不适用于许多系统。可靠性信息和基于压力源的预测(分别为I型和II型)可以为GPM提供必要的先验信念。本文介绍了贝叶斯更新框架,以在GPM中包括先验信息,并比较了在两个数据集上包含不同信息源的功效。

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