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Physics Informed Neural Nets for Systems Health ManagementTo facilitate and solve the prediction problem, awareness of the current health state of the system is key, since it is necessary to perform condition-based predictions. To accurately predict the future state of any system, it is required to possess knowledge of its current health state and future operational conditions. Development in data-driven algorithms in regression of complex nonlinear functions and classification tasks have generated a growing interest in artificial intelligence for industrial applications. Complex multi-physics models as well as digital twins, once purely built on physics and corresponding simplified lumped parameter iterations, can now benefit from machine learning algorithms to mitigate the lack of understanding of some complex behavior. The research work presents application of physics-informed neural nets application to a representative electric powertrain for unmanned aerial vehicles. The model is composed of physics-derived and empirical equations, integrated with connected networks that are strategically placed within the model to substitute equations that are subject to large uncertainty. Polynomial fit driven by heuristics or empirical observations can be substituted by more flexible networks that can minimize the error between model predictions and observations without being restricted to a predefined functional form. This modeling strategy allows training of networks deep inside the model and unknown parameters in a single learning stage.
Document ID
20230008261
Acquisition Source
Ames Research Center
Document Type
Presentation
Authors
Chetan S. Kulkarni
(Wyle (United States) El Segundo, California, United States)
Date Acquired
May 26, 2023
Subject Category
Aeronautics (General)
Meeting Information
Meeting: IEEE Conference on Artificial Intelligence ( IEEE - CAI)
Location: Santa Clara, CA
Country: US
Start Date: June 5, 2023
End Date: June 6, 2023
Sponsors: Institute of Radio-Engineering and Electronics
Funding Number(s)
CONTRACT_GRANT: 80ARC020D0010
Distribution Limits
Public
Copyright
Public Use Permitted.
Technical Review
NASA Peer Committee
Keywords
Physics Informed
Neural Nets
Prognostics
Health Management
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