Title Symbolic neural architecture search for differential equations /
Authors Sasnauskas, Paulius ; Petkevičius, Linas
DOI 10.1109/ACCESS.2023.3342023
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Is Part of IEEE access.. Piscataway, NJ : Institute of Electrical and Electronics Engineers (IEEE). 2023, vol. 11, p. 141232-141240.. eISSN 2169-3536
Keywords [eng] mathematical models ; differential equations ; computer architecture ; optimization ; task analysis ; partial differential equations ; parametric statistics
Abstract [eng] In this paper, we introduce the first use of symbolic integration that leverages the machine learning infrastructure, such as automatic differentiation, to find analytical approximations of ordinary and partial differential equations. Analytical solutions to differential equations are at the core of fundamental mathematical models, which often cannot be determined analytically because of model complexity or non-linearity. Traditionally, the methods for solving these problems have used hand-designed strategies, numerical methods, or iterative methods. We propose a method that is an application of differentiable architecture search to find solutions to differential equations. We demonstrate our proposed method on a set of equations while simultaneously comparing it with numerical solutions to corresponding problems. We demonstrate that the proposed framework allows for solutions to various problems.
Published Piscataway, NJ : Institute of Electrical and Electronics Engineers (IEEE)
Type Journal article
Language English
Publication date 2023
CC license CC license description