Theoretical Advances in Lebesgue-Sampling-Based Prognostic Algorithms
Keywords: condition monitoring, fault diagnosis, statistical distributions, failure analysis, particle filtering (numerical methods), remaining life assessment, Riemman-based prognostic methods, LS-based prognostic methods, Lebesgue-sampling-based prognostic algorithms, execution time savings, time-of-failure distribution, Lebesgue-sampling methods, empirical degradation model, just-in-time point, JITP, time-of-failure probability density function statistics, Lebesgue sampling, crack length prognostics
Abstract
Lebesgue-sampling-based prognostic algorithms have demonstrated computational advantages and execution time savings of several orders of magnitude over Riemman-based prognostic methods. In this regard, some remarkable achievements have been obtained when using Lebesgue-sampling(LS) methods to build empirical degradation models in terms of statistics of the Time-of-Failure distribution, such as the Just-in-Time Point (JITP). This article studies some theoretical issues related to the implementation of LS-based prognostic methods, and analyzes the impact associated with the utilization of alternative procedures for the computation of Time-of-Failure probability density function statistics.
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Fecha de publicación: | 2019 |
Año de Inicio/Término: | 2-5 May 2019 |
URL: | https://ieeexplore.ieee.org/document/8756471 |