Combining Dynamic Bayesian Networks and Continuous Time Bayesian Networks for Diagnostic and Prognostic Modeling

Thumbnail Image

Date

2022-08

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE

Abstract

The problem of performing general prognostics and health management, especially in electronic systems, continues to present significant challenges. The low availability of failure data, makes learning generalized models difficult, and constructing generalized models during the design phase often requires a level of understanding of the failure mechanism that elude the designers. In this paper, we present a new, generalized approach to PHM based on two commonly available probabilistic models, Bayesian Networks and Continuous-Time Bayesian Networks, and pose the PHM problem from the perspective of risk mit-igation rather than failure prediction. We describe the tools and process for employing these tools in the hopes of motivating new ideas for investigating how best to advance PHM in the aerospace industry.

Description

Keywords

bayesian networks, diagnostic modeling, prognostic modeling

Citation

Schupbach, J., Pryor, E., Webster, K., & Sheppard, J. (2022, August). Combining Dynamic Bayesian Networks and Continuous Time Bayesian Networks for Diagnostic and Prognostic Modeling. In 2022 IEEE AUTOTESTCON (pp. 1-8). IEEE.

Endorsement

Review

Supplemented By

Referenced By

Creative Commons license

Except where otherwised noted, this item's license is described as copyright IEEE 2022
Copyright (c) 2002-2022, LYRASIS. All rights reserved.