Near Real-Time Probabilistic Damage Diagnosis Using Surrogate Modeling and High Performance ComputingThis work investigates novel approaches to probabilistic damage diagnosis that utilize surrogate modeling and high performance computing (HPC) to achieve substantial computational speedup. Motivated by Digital Twin, a structural health management (SHM) paradigm that integrates vehicle-specific characteristics with continual in-situ damage diagnosis and prognosis, the methods studied herein yield near real-time damage assessments that could enable monitoring of a vehicle's health while it is operating (i.e. online SHM). High-fidelity modeling and uncertainty quantification (UQ), both critical to Digital Twin, are incorporated using finite element method simulations and Bayesian inference, respectively. The crux of the proposed Bayesian diagnosis methods, however, is the reformulation of the numerical sampling algorithms (e.g. Markov chain Monte Carlo) used to generate the resulting probabilistic damage estimates. To this end, three distinct methods are demonstrated for rapid sampling that utilize surrogate modeling and exploit various degrees of parallelism for leveraging HPC. The accuracy and computational efficiency of the methods are compared on the problem of strain-based crack identification in thin plates. While each approach has inherent problem-specific strengths and weaknesses, all approaches are shown to provide accurate probabilistic damage diagnoses and several orders of magnitude computational speedup relative to a baseline Bayesian diagnosis implementation.
Document ID
20170001319
Acquisition Source
Langley Research Center
Document Type
Conference Paper
Authors
Warner, James E. (NASA Langley Research Center Hampton, VA, United States)
Zubair, Mohammad (Old Dominion Univ. Norfolk, VA, United States)
Ranjan, Desh (Old Dominion Univ. Norfolk, VA, United States)
Date Acquired
February 3, 2017
Publication Date
January 9, 2017
Subject Category
Computer Programming And Software
Report/Patent Number
NF1676L-24792Report Number: NF1676L-24792
Meeting Information
Meeting: AIAA SciTech 2017
Location: Grapevine, TX
Country: United States
Start Date: January 9, 2017
End Date: January 13, 2017
Sponsors: American Inst. of Aeronautics and Astronautics