Physics-Driven ML-Based Modelling for Correcting Inverse Estimation
September 25, 2023 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Ruiyuan Kang, Tingting Mu, Panos Liatsis, Dimitrios C. Kyritsis
arXiv ID
2309.13985
Category
cs.LG: Machine Learning
Cross-listed
cs.NE
Citations
2
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
When deploying machine learning estimators in science and engineering (SAE) domains, it is critical to avoid failed estimations that can have disastrous consequences, e.g., in aero engine design. This work focuses on detecting and correcting failed state estimations before adopting them in SAE inverse problems, by utilizing simulations and performance metrics guided by physical laws. We suggest to flag a machine learning estimation when its physical model error exceeds a feasible threshold, and propose a novel approach, GEESE, to correct it through optimization, aiming at delivering both low error and high efficiency. The key designs of GEESE include (1) a hybrid surrogate error model to provide fast error estimations to reduce simulation cost and to enable gradient based backpropagation of error feedback, and (2) two generative models to approximate the probability distributions of the candidate states for simulating the exploitation and exploration behaviours. All three models are constructed as neural networks. GEESE is tested on three real-world SAE inverse problems and compared to a number of state-of-the-art optimization/search approaches. Results show that it fails the least number of times in terms of finding a feasible state correction, and requires physical evaluations less frequently in general.
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