Identification of Uncertain Parameter in Flight Vehicle Using Physics-Informed Deep Learning

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This paper presents the estimation method for uncertain parameters in flight vehicles, especially missile systems, based on physics-informed neural networks (PINNs) augmented with a novel integration-based loss. The proposed method identifies four types of structured uncertainty: burnout time, rocket motor tilt angle, location of the center of pressure, and control fin bias, which significantly affect the missile performance. In the estimation framework, as neural networks (NNs) are updated, these uncertainties are also identified simultaneously because they are also included in the structure of NNs. After testing 100 simulation data, the average estimation errors are within 1% of the mean value for each type of uncertainty. The methodology is able to identify the parameters despite noise corruption in the time-series data. Compared with the conventional PINNs, adding the new loss based on the integration of differential equations yields a more reliable estimation performance for all types of uncertainty. This approach can be effective for complex systems and ill-posed inverse problems, which makes it applicable to other aerospace systems.
Publisher
AMER INST AERONAUTICS ASTRONAUTICS
Issue Date
2024-02
Language
English
Article Type
Article; Early Access
Citation

JOURNAL OF AEROSPACE INFORMATION SYSTEMS, v.21, no.2, pp.152 - 167

ISSN
1940-3151
DOI
10.2514/1.I011269
URI
http://hdl.handle.net/10203/318377
Appears in Collection
AE-Journal Papers(저널논문)
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