Physics-Guided Adversarial Machine Learning for Aircraft Systems
Simulation
- URL: http://arxiv.org/abs/2209.03431v1
- Date: Wed, 7 Sep 2022 19:23:45 GMT
- Title: Physics-Guided Adversarial Machine Learning for Aircraft Systems
Simulation
- Authors: Houssem Ben Braiek, Thomas Reid, and Foutse Khomh
- Abstract summary: This work presents a novel approach, physics-guided adversarial machine learning (ML), that improves the confidence over the physics consistency of the model.
Empirical evaluation on two aircraft system performance models shows the effectiveness of our adversarial ML approach.
- Score: 9.978961706999833
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the context of aircraft system performance assessment, deep learning
technologies allow to quickly infer models from experimental measurements, with
less detailed system knowledge than usually required by physics-based modeling.
However, this inexpensive model development also comes with new challenges
regarding model trustworthiness. This work presents a novel approach,
physics-guided adversarial machine learning (ML), that improves the confidence
over the physics consistency of the model. The approach performs, first, a
physics-guided adversarial testing phase to search for test inputs revealing
behavioral system inconsistencies, while still falling within the range of
foreseeable operational conditions. Then, it proceeds with physics-informed
adversarial training to teach the model the system-related physics domain
foreknowledge through iteratively reducing the unwanted output deviations on
the previously-uncovered counterexamples. Empirical evaluation on two aircraft
system performance models shows the effectiveness of our adversarial ML
approach in exposing physical inconsistencies of both models and in improving
their propensity to be consistent with physics domain knowledge.
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