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Application of Sparse Identification of Nonlinear Dynamics for Physics-Informed LearningAdvances in machine learning and deep neural networks has enabled complex engineering tasks like image recognition, anomaly detection, regression, and multi-objective optimization, to name but a few. The complexity of the algorithm architecture, e.g., the number of hidden layers in a deep neural network, typically grows with the complexity of the problems they are required to solve, leaving little room for interpreting (or explaining) the path that results in a specific solution. This drawback is particularly relevant for autonomous aerospace and aviation systems, where certifications require a complete understanding of the algorithm behavior in all possible scenarios. Including physics knowledge in such data-driven tools may improve the interpretability of the algorithms, thus enhancing model validation against events with low probability but relevant for system certification. Such events include, for example, spacecraft or aircraft sub-system failures, for which data may not be available in the training phase. This paper investigates a recent physics-informed learning algorithm for identification of system dynamics, and shows how the governing equations of a system can be extracted from data using sparse regression. The learned relationships can be utilized as a surrogate model which, unlike typical data-driven surrogate models, relies on the learned underlying dynamics of the system rather than large number of fitting parameters. The work shows that the algorithm can reconstruct the differential equations underlying the observed dynamics using a single trajectory when no uncertainty is involved. However, the training set size must increase when dealing with stochastic systems, e.g., nonlinear dynamics with random initial conditions.
Document ID
20200001544
Acquisition Source
Ames Research Center
Document Type
Conference Paper
Authors
Corbetta, Matteo
(Stinger Ghaffarian Technologies Inc. (SGT Inc.) Moffett Field, CA, United States)
Date Acquired
March 12, 2020
Publication Date
March 7, 2020
Subject Category
Physics (General)
Computer Systems
Aeronautics (General)
Report/Patent Number
ARC-E-DAA-TN74424
Report Number: ARC-E-DAA-TN74424
Meeting Information
Meeting: IEEE Aerospace Conference
Location: Big Sky, MT
Country: United States
Start Date: March 7, 2020
End Date: March 14, 2020
Sponsors: Institute of Electrical and Electronics Engineers (IEEE)
Funding Number(s)
CONTRACT_GRANT: NNA14AA60C
PROJECT: ARMD
Distribution Limits
Public
Copyright
Public Use Permitted.
Technical Review
NASA Peer Committee
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