Lax pairs informed neural networks solving integrable systems

Juncai Pu, Yong Chen
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Abstract

Lax pairs are one of the most important features of integrable system. In this work, we propose the Lax pairs informed neural networks (LPNNs) tailored for the integrable systems with Lax pairs by designing novel network architectures and loss functions, comprising LPNN-v1 and LPNN-v2. The most noteworthy advantage of LPNN-v1 is that it can transform the solving of nonlinear integrable systems into the solving of a linear Lax pairs spectral problems, and it not only efficiently solves data-driven localized wave solutions, but also obtains spectral parameter and corresponding spectral function in Lax pairs spectral problems of the integrable systems. On the basis of LPNN-v1, we additionally incorporate the compatibility condition/zero curvature equation of Lax pairs in LPNN-v2, its major advantage is the ability to solve and explore high-accuracy data-driven localized wave solutions and associated spectral problems for integrable systems with Lax pairs. The numerical experiments focus on studying abundant localized wave solutions for very important and representative integrable systems with Lax pairs spectral problems, including the soliton solution of the Korteweg-de Vries (KdV) euqation and modified KdV equation, rogue wave solution of the nonlinear Schr\"odinger equation, kink solution of the sine-Gordon equation, non-smooth peakon solution of the Camassa-Holm equation and pulse solution of the short pulse equation, as well as the line-soliton solution of Kadomtsev-Petviashvili equation and lump solution of high-dimensional KdV equation. The innovation of this work lies in the pioneering integration of Lax pairs informed of integrable systems into deep neural networks, thereby presenting a fresh methodology and pathway for investigating data-driven localized wave solutions and Lax pairs spectral problems.
求解可积分系统的拉克斯对知情神经网络
拉克斯对是可积分系统最重要的特征之一。在这项工作中,我们通过设计新颖的网络结构和损失函数,提出了为具有 Lax 对的可积分系统量身定制的 Lax 对知情神经网络(LPNN),包括 LPNN-v1 和 LPNN-v2。LPNN-v1 最显著的优点是能将非线性可积分系统的求解转化为线性 Lax 对谱问题的求解,不仅能高效求解数据驱动的局部波求解,还能获得可积分系统 Lax 对谱问题的谱参数和相应的谱函数。在 LPNN-v1 的基础上,我们在 LPNN-v2 中加入了 Lax 对的相容条件/曲率方程,其主要优势在于能够求解和探索高精度数据驱动的局部波解和 Lax 对可积分系统的相关谱问题。数值实验重点研究了非常重要且具有代表性的拉克斯对可积分系统频谱问题的丰富的局部波解,包括 Korteweg-de Vries (KdV) 公式和修正 KdV 公式的孤子解、非线性薛定谔方程的流氓波解、正弦-高尔基方程的扭结解、非线性薛定谔方程的流氓波解、非线性薛定谔方程的流氓波解、正弦-戈登方程的扭结解、卡马萨-霍尔姆方程的非平滑峰解和短脉冲方程的脉冲解,以及卡多姆采夫-佩特维亚什维利方程的线-孤立子解和高维 KdV 方程的块解。这项工作的创新之处在于开创性地将可积分系统的拉克斯对通报集成到深度神经网络中,从而为研究数据驱动的局部波解和拉克斯对谱问题提供了一种全新的方法和途径。
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