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Improving Multi-Model Trajectory Simulation Estimators using Model Selection and TuningMulti-model Monte Carlo methods have been demonstrated to be an efficient and accurate alternative to standard Monte Carlo (MC) in the model-based propagation of uncertainty in entry, descent, and landing (EDL) applications. These multi-model MC methods fuse predictions from low-fidelity models with the high-fidelity EDL model of interest to produce unbiased statistics with a fraction of the computational cost. The accuracy and efficiency of the multi-model MC methods are dependent upon the magnitude of correlations of the low-fidelity models with the high-fidelity model, but also upon the correlation among the low-fidelity models, and their relative computational cost. Because of this layer of complexity, the question of how to optimally select the set of low-fidelity models has remained open. In this work, methods for optimal model construction and tuning are investigated as a means to increase the speed and precision of trajectory simulation for EDL. Specifically, the focus is on the inclusion of low-fidelity model tuning within the sample allocation optimization that accompanies multi-model MC methods.
Preliminary results indicate that low-fidelity model tuning can significantly improve efficiency and precision of trajectory simulations and provide an increased edge to multi-model MC methods when compared to standard MC. The challenges and potential benefits to exploring a fully iterative and comprehensive optimization strategy in future work are highlighted.
Document ID
20210025435
Acquisition Source
Langley Research Center
Document Type
Conference Paper
Authors
Geoffrey F Bomarito
(Langley Research Center Hampton, Virginia, United States)
Gianluca Geraci
(Sandia National Laboratories Albuquerque, New Mexico, United States)
James E Warner
(Langley Research Center Hampton, Virginia, United States)
Patrick E Leser
(Langley Research Center Hampton, Virginia, United States)
William P Leser
(Langley Research Center Hampton, Virginia, United States)
Michael S Eldred
(Sandia National Laboratories Albuquerque, New Mexico, United States)
John D Jakeman
(Sandia National Laboratories Albuquerque, New Mexico, United States)
Alex A Gorodetsky
(University of Michigan–Ann Arbor Ann Arbor, Michigan, United States)
Date Acquired
December 3, 2021
Subject Category
Numerical Analysis
Meeting Information
Meeting: AIAA SciTech Forum
Location: San Diego, CA
Country: US
Start Date: January 3, 2022
End Date: January 7, 2022
Sponsors: American Institute of Aeronautics and Astronautics
Funding Number(s)
WBS: 335803.04.22.23.10.01
CONTRACT_GRANT: DE-NA0003525
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
NASA Technical Management
Keywords
uncertainty quantification
monte carlo
approximate control variates
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