Structure-Preserving Recurrent Neural Networks for a Class of Birkhoffian Systems

Shanshan Xiao, Mengyi Chen,Ruili Zhang,Yifa Tang

Journal of Systems Science and Complexity(2024)

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摘要
In this paper, the authors propose a neural network architecture designed specifically for a class of Birkhoffian systems — The Newtonian system. The proposed model utilizes recurrent neural networks (RNNs) and is based on a mathematical framework that ensures the preservation of the Birkhoffian structure. The authors demonstrate the effectiveness of the proposed model on a variety of problems for which preserving the Birkhoffian structure is important, including the linear damped oscillator, the Van der Pol equation, and a high-dimensional example. Compared with the unstructured baseline models, the Newtonian neural network (NNN) is more data efficient, and exhibits superior generalization ability.
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关键词
Birkhoffian system,k(z, t)-symplectic,neural networks,recurrent neural network
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