DSLGNAJan 8, 2024

Generalized Lagrangian Neural Networks

arXiv:2401.03728v28 citationsh-index: 3Commun Comput Phys
Originality Incremental advance
AI Analysis

This work addresses a specific computational mathematics problem for researchers in physics and engineering by providing an incremental extension to existing neural network methods for ODEs.

The authors tackled the problem of solving Ordinary Differential Equations (ODEs) for non-conservative systems by extending Lagrangian Neural Networks (LNNs) to Generalized Lagrangian Neural Networks (GLNNs), resulting in enhanced prediction accuracy and guaranteed Lagrangian representation in such systems.

Incorporating neural networks for the solution of Ordinary Differential Equations (ODEs) represents a pivotal research direction within computational mathematics. Within neural network architectures, the integration of the intrinsic structure of ODEs offers advantages such as enhanced predictive capabilities and reduced data utilization. Among these structural ODE forms, the Lagrangian representation stands out due to its significant physical underpinnings. Building upon this framework, Bhattoo introduced the concept of Lagrangian Neural Networks (LNNs). Then in this article, we introduce a groundbreaking extension (Genralized Lagrangian Neural Networks) to Lagrangian Neural Networks (LNNs), innovatively tailoring them for non-conservative systems. By leveraging the foundational importance of the Lagrangian within Lagrange's equations, we formulate the model based on the generalized Lagrange's equation. This modification not only enhances prediction accuracy but also guarantees Lagrangian representation in non-conservative systems. Furthermore, we perform various experiments, encompassing 1-dimensional and 2-dimensional examples, along with an examination of the impact of network parameters, which proved the superiority of Generalized Lagrangian Neural Networks(GLNNs).

Foundations

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