Reconstruction of dynamic systems using genetic algorithms with dynamic search limits
December 03, 2024 ยท Declared Dead ยท ๐ Engineering computations
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Authors
Omar Rodrรญguez-Abreo, Josรฉ Luis Aragรณn, Mario Alan Quiroz-Juรกrez
arXiv ID
2412.02894
Category
cs.NE: Neural & Evolutionary
Cross-listed
math.DS,
nlin.CD
Citations
0
Venue
Engineering computations
Last Checked
4 months ago
Abstract
Mathematical modeling is a powerful tool for describing, predicting, and understanding complex phenomena exhibited by real-world systems. However, identifying the equations that govern a system's dynamics from experimental data remains a significant challenge without a definitive solution. In this study, evolutionary computing techniques are presented to estimate the governing equations of a dynamical system using time-series data. The main approach is to propose polynomial equations with unknown coefficients, and subsequently perform a parametric estimation using genetic algorithms. Some of the main contributions of the present study are an adequate modification of the genetic algorithm to remove terms with minimal contributions, and a mechanism to escape local optima during the search. To evaluate the proposed method, we applied it to three dynamical systems: a linear model, a nonlinear model, and the Lorenz system. Our results demonstrate a reconstruction with an Integral Square Error below 0.22 and a coefficient of determination R-squared of 0.99 for all systems, indicating successful reconstruction of the governing dynamic equations.
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