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A New Method for Solving Nonlinear Partial Differential Equations Based on Liquid Time-Constant Networks 基于液体时常网络的非线性偏微分方程求解新方法
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-01-26 DOI: 10.1007/s11424-024-3349-z
Jiuyun Sun, Huanhe Dong, Yong Fang

Abstract

In this paper, physics-informed liquid networks (PILNs) are proposed based on liquid time-constant networks (LTC) for solving nonlinear partial differential equations (PDEs). In this approach, the network state is controlled via ordinary differential equations (ODEs). The significant advantage is that neurons controlled by ODEs are more expressive compared to simple activation functions. In addition, the PILNs use difference schemes instead of automatic differentiation to construct the residuals of PDEs, which avoid information loss in the neighborhood of sampling points. As this method draws on both the traveling wave method and physics-informed neural networks (PINNs), it has a better physical interpretation. Finally, the KdV equation and the nonlinear Schrödinger equation are solved to test the generalization ability of the PILNs. To the best of the authors’ knowledge, this is the first deep learning method that uses ODEs to simulate the numerical solutions of PDEs.

摘要 本文提出了基于液体时间不变网络(LTC)的物理信息液体网络(PILN),用于求解非线性偏微分方程(PDE)。在这种方法中,网络状态是通过常微分方程(ODE)控制的。其显著优势在于,与简单的激活函数相比,由 ODE 控制的神经元更具表现力。此外,PILNs 使用差分方案而不是自动微分来构建 PDE 的残差,从而避免了采样点附近的信息丢失。由于这种方法借鉴了行波法和物理信息神经网络(PINNs),因此具有更好的物理解释能力。最后,我们求解了 KdV 方程和非线性薛定谔方程,以检验 PILN 的泛化能力。据作者所知,这是第一种利用 ODE 模拟 PDE 数值解的深度学习方法。
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引用次数: 0
Number of Solitons Emerged in the Initial Profile of Shallow Water Using Convolutional Neural Networks 利用卷积神经网络计算浅水初始剖面中出现的孤子数量
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-01-26 DOI: 10.1007/s11424-024-3337-3
Zhen Wang, Shikun Cui

The soliton resolution conjecture proposes that the initial value problem can evolve into a dispersion part and a soliton part. However, the problem of determining the number of solitons that form in a given initial profile remains unsolved, except for a few specific cases. In this paper, the authors use the deep learning method to predict the number of solitons in a given initial value of the Korteweg-de Vries (KdV) equation. By leveraging the analytical relationship between Asech2(x) initial values and the number of solitons, the authors train a Convolutional Neural Network (CNN) that can accurately identify the soliton count from spatio-temporal data. The trained neural network is capable of predicting the number of solitons with other given initial values without any additional assistance. Through extensive calculations, the authors demonstrate the effectiveness and high performance of the proposed method.

孤子解析猜想提出,初值问题可以演化为离散部分和孤子部分。然而,除了少数特定情况外,确定在给定初始剖面中形成的孤子数量的问题仍未解决。在本文中,作者使用深度学习方法来预测 Korteweg-de Vries(KdV)方程给定初始值中的孤子数量。通过利用 Asech2(x) 初始值与孤子数量之间的分析关系,作者训练了一个卷积神经网络(CNN),该网络可以从时空数据中准确识别孤子数量。训练好的神经网络能够预测其他给定初始值的孤子数量,而无需任何额外的辅助。通过大量计算,作者证明了所提方法的有效性和高性能。
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引用次数: 0
Parallel Physics-Informed Neural Networks Method with Regularization Strategies for the Forward-Inverse Problems of the Variable Coefficient Modified KdV Equation 针对变系数修正 KdV 方程正反问题的并行物理信息神经网络方法与正则化策略
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-01-26 DOI: 10.1007/s11424-024-3467-7
Huijuan Zhou

Abstract

This paper mainly introduces the parallel physics-informed neural networks (PPINNs) method with regularization strategies to solve the data-driven forward-inverse problems of the variable coefficient modified Korteweg-de Vries (VC-MKdV) equation. For the forward problem of the VC-MKdV equation, the authors use the traditional PINN method to obtain satisfactory data-driven soliton solutions and provide a detailed analysis of the impact of network width and depth on solving accuracy and speed. Furthermore, the author finds that the traditional PINN method outperforms the one with locally adaptive activation functions in solving the data-driven forward problems of the VC-MKdV equation. As for the data-driven inverse problem of the VC-MKdV equation, the author introduces a parallel neural networks to separately train the solution function and coefficient function, successfully addressing the function discovery problem of the VC-MKdV equation. To further enhance the network’s generalization ability and noise robustness, the author incorporates two regularization strategies into the PPINNs. An amount of numerical experimental data in this paper demonstrates that the PPINNs method can effectively address the function discovery problem of the VC-MKdV equation, and the inclusion of appropriate regularization strategies in the PPINNs can improves its performance.

摘要 本文主要介绍了采用正则化策略的并行物理信息神经网络(PPINNs)方法求解变系数修正Korteweg-de Vries(VC-MKdV)方程的数据驱动正演反演问题。对于 VC-MKdV 方程的正演问题,作者使用传统 PINN 方法获得了令人满意的数据驱动孤子解,并详细分析了网络宽度和深度对求解精度和速度的影响。此外,作者还发现,在求解 VC-MKdV 方程的数据驱动正向问题时,传统 PINN 方法优于具有局部自适应激活函数的方法。对于数据驱动的 VC-MKdV 方程反演问题,作者引入并行神经网络分别训练解函数和系数函数,成功解决了 VC-MKdV 方程的函数发现问题。为了进一步提高网络的泛化能力和噪声鲁棒性,作者在 PPINN 中加入了两种正则化策略。本文中的大量数值实验数据表明,PPINNs 方法可以有效解决 VC-MKdV 方程的函数发现问题,而在 PPINNs 中加入适当的正则化策略可以提高其性能。
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引用次数: 0
Pre-Training Physics-Informed Neural Network with Mixed Sampling and Its Application in High-Dimensional Systems 混合采样预训练物理信息神经网络及其在高维系统中的应用
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-01-26 DOI: 10.1007/s11424-024-3321-y
Haiyi Liu, Yabin Zhang, Lei Wang

Recently, the physics-informed neural network shows remarkable ability in the context of solving the low-dimensional nonlinear partial differential equations. However, for some cases of high-dimensional systems, such technique may be time-consuming and inaccurate. In this paper, the authors put forward a pre-training physics-informed neural network with mixed sampling (pPINN) to address these issues. Just based on the initial and boundary conditions, the authors design the pre-training stage to filter out the set of the misfitting points, which is regarded as part of the training points in the next stage. The authors further take the parameters of the neural network in Stage 1 as the initialization in Stage 2. The advantage of the proposed approach is that it takes less time to transfer the valuable information from the first stage to the second one to improve the calculation accuracy, especially for the high-dimensional systems. To verify the performance of the pPINN algorithm, the authors first focus on the growing-and-decaying mode of line rogue wave in the Davey-Stewartson I equation. Another case is the accelerated motion of lump in the inhomogeneous Kadomtsev-Petviashvili equation, which admits a more complex evolution than the uniform equation. The exact solution provides a perfect sample for data experiments, and can also be used as a reference frame to identify the performance of the algorithm. The experiments confirm that the pPINN algorithm can improve the prediction accuracy and training efficiency well, and reduce the training time to a large extent for simulating nonlinear waves of high-dimensional equations.

最近,物理信息神经网络在求解低维非线性偏微分方程方面表现出了卓越的能力。然而,对于某些高维系统,这种技术可能会耗时且不准确。本文作者提出了一种混合采样的预训练物理信息神经网络(pPINN)来解决这些问题。作者仅根据初始条件和边界条件,设计了预训练阶段,以过滤出错误拟合点集,并将其视为下一阶段训练点的一部分。作者进一步将第一阶段的神经网络参数作为第二阶段的初始化参数。所提方法的优点在于,将有价值的信息从第一阶段转移到第二阶段所需的时间更短,从而提高了计算精度,尤其是对于高维系统。为了验证 pPINN 算法的性能,作者首先关注了 Davey-Stewartson I 方程中线流氓波的增长-衰减模式。另一个案例是不均匀卡多姆采夫-佩特维亚什维利方程中的肿块加速运动,它的演化比均匀方程更为复杂。精确解为数据实验提供了一个完美的样本,也可用作确定算法性能的参考框架。实验证实,pPINN 算法能很好地提高预测精度和训练效率,并在很大程度上减少了模拟高维方程非线性波的训练时间。
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引用次数: 0
Physics-Informed Neural Networks with Two Weighted Loss Function Methods for Interactions of Two-Dimensional Oceanic Internal Solitary Waves 采用两种加权损失函数方法的物理信息神经网络与二维海洋内孤波的相互作用
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-01-26 DOI: 10.1007/s11424-024-3500-x
Junchao Sun, Yong Chen, Xiaoyan Tang

The multiple patterns of internal solitary wave interactions (ISWI) are a complex oceanic phenomenon. Satellite remote sensing techniques indirectly detect these ISWI, but do not provide information on their detailed structure and dynamics. Recently, the authors considered a three-layer fluid with shear flow and developed a (2+1) Kadomtsev-Petviashvili (KP) model that is capable of describing five types of oceanic ISWI, including O-type, P-type, TO-type, TP-type, and Y-shaped. Deep learning models, particularly physics-informed neural networks (PINN), are widely used in the field of fluids and internal solitary waves. However, the authors find that the amplitude of internal solitary waves is much smaller than the wavelength and the ISWI occur at relatively large spatial scales, and these characteristics lead to an imbalance in the loss function of the PINN model. To solve this problem, the authors introduce two weighted loss function methods, the fixed weighing and the adaptive weighting methods, to improve the PINN model. This successfully simulated the detailed structure and dynamics of ISWI, with simulation results corresponding to the satellite images. In particular, the adaptive weighting method can automatically update the weights of different terms in the loss function and outperforms the fixed weighting method in terms of generalization ability.

内孤波相互作用(ISWI)的多种模式是一种复杂的海洋现象。卫星遥感技术可间接探测到这些 ISWI,但无法提供其详细结构和动力学信息。最近,作者考虑了具有剪切流的三层流体,建立了一个(2+1)Kadomtsev-Petviashvili(KP)模型,该模型能够描述五种类型的海洋 ISWI,包括 O 型、P 型、TO 型、TP 型和 Y 型。深度学习模型,尤其是物理信息神经网络(PINN),被广泛应用于流体和内孤波领域。然而,作者发现内孤波的振幅远小于波长,而且内孤波发生在相对较大的空间尺度上,这些特点导致 PINN 模型的损失函数失衡。为解决这一问题,作者引入了两种加权损失函数方法,即固定加权法和自适应加权法,以改进 PINN 模型。这成功地模拟了 ISWI 的详细结构和动态,模拟结果与卫星图像相对应。其中,自适应加权法可以自动更新损失函数中不同项的权重,在泛化能力方面优于固定加权法。
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引用次数: 0
A New Random Sampling Method and Its Application in Improving Progressive BKZ Algorithm 一种新的随机抽样方法及其在改进渐进式BKZ算法中的应用
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2023-10-25 DOI: 10.1007/s11424-023-3107-7
Minghao Sun, Shixiong Wang, Hao Chen, Longjiang Qu
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引用次数: 0
A New Class of Strong Orthogonal Arrays of Strength Three 一类新的强度为3的强正交阵列
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2023-10-25 DOI: 10.1007/s11424-023-3093-9
Chunyan Wang, Min-Qian Liu, Jinyu Yang
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引用次数: 0
Fixed-Time Anti-Disturbance Average-Tracking for Multi-Agent Systems Without Velocity Measurements 无速度测量的多智能体系统的固定时间抗干扰平均跟踪
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2023-10-21 DOI: 10.1007/s11424-023-2461-9
Yuling Li, Chenglin Liu, Ya Zhang, Yangyang Chen
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引用次数: 0
Two-Stage Online Debiased Lasso Estimation and Inference for High-Dimensional Quantile Regression with Streaming Data 流数据下高维分位数回归的两阶段在线去偏Lasso估计与推理
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2023-10-21 DOI: 10.1007/s11424-023-3014-y
Yanjin Peng, Lei Wang
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引用次数: 0
The Impact of General Correlation Under Multi-Period Mean-Variance Asset-Liability Portfolio Management 多期均值方差资产负债组合管理下一般相关性的影响
3区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Pub Date : 2023-10-21 DOI: 10.1007/s11424-023-3019-6
Xianping Wu, Weiping Wu, Yu Lin
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引用次数: 0
期刊
Journal of Systems Science & Complexity
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