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Nonlinear input feature reduction for data-based physical modeling
by
Beneddine, Samir
in
Algorithms
/ Datasets
/ Dimensional analysis
/ Law of the wall
/ Optimization
/ Turbulent boundary layer
2022
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Nonlinear input feature reduction for data-based physical modeling
by
Beneddine, Samir
in
Algorithms
/ Datasets
/ Dimensional analysis
/ Law of the wall
/ Optimization
/ Turbulent boundary layer
2022
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Nonlinear input feature reduction for data-based physical modeling
Paper
Nonlinear input feature reduction for data-based physical modeling
2022
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Overview
This work introduces a novel methodology to derive physical scalings for input features from data. The approach developed in this article relies on the maximization of mutual information to derive optimal nonlinear combinations of input features. These combinations are both adapted to physics-related models and interpretable (in a symbolic way). The algorithm is presented in detail, then tested on a synthetic toy model. The results show that our approach can effectively construct relevant combinations by analyzing a strongly noisy nonlinear dataset. These results are promising and may significantly help training data-driven models. Finally, the last part of the paper introduces a way to perform automatic dimensional analysis from data. The test case is a synthetic dataset inspired by the Law of the Wall from turbulent boundary layer theory. Once again, the algorithm shows that it can recover relevant nondimensional variables from data.
Publisher
Cornell University Library, arXiv.org
Subject
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