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Discovering asymptotic expansions for problems in mechanics using symbolic regression

Abdusalamov, Rasul; Kaplunov, Julius; Itskov, Mikhail

Authors

Rasul Abdusalamov

Mikhail Itskov



Abstract


Recently, symbolic regression (SR) has demonstrated its efficiency for discovering basic governing relations in physical systems. A major impact can be potentially achieved by coupling symbolic regression with asymptotic methodology. The main advantage of asymptotic approach involves the robust approximation to the sought for solution bringing a clear idea of the effect of problem parameters. However, the analytic derivation of the asymptotic series is often highly nontrivial especially, when the exact solution is not available.
In this paper, we adapt SR methodology to discover asymptotic series. As an illustration we consider three problem in mechanics, including two-mass collision, viscoelastic behavior of a Kelvin-Voigt solid and propagation of Rayleigh–Lamb waves. The training data is generated from the explicit exact solutions of these problems. The obtained SR results are compared to the benchmark asymptotic expansions of the above mentioned exact solutions. Both convergent and divergent asymptotic series are considered. A good agreement between SR expansions and exact analytical results is observed. It is demonstrated that the proposed approach can be used to identify material parameters, e.g. Poisson’s ratio, and has high prospects for utilizing experimental and numerical data.

Citation

Abdusalamov, R., Kaplunov, J., & Itskov, M. (in press). Discovering asymptotic expansions for problems in mechanics using symbolic regression. Mechanics Research Communications, 133, Article 104197. https://doi.org/10.1016/j.mechrescom.2023.104197

Journal Article Type Article
Acceptance Date Sep 22, 2023
Online Publication Date Sep 24, 2023
Deposit Date Dec 12, 2023
Publicly Available Date Sep 25, 2025
Journal Mechanics Research Communications
Print ISSN 0093-6413
Electronic ISSN 1873-3972
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 133
Article Number 104197
DOI https://doi.org/10.1016/j.mechrescom.2023.104197
Keywords Asymptotic ; Symbolic regression; Kelvin–Voigt model; Rayleigh–Lamb waves

Files

This file is under embargo until Sep 25, 2025 due to copyright reasons.

Contact s.martin1@keele.ac.uk to request a copy for personal use.




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