Solve High-Dimensional Reflected Partial Differential Equations by Neural Network Method

被引:0
|
作者
Shi, Xiaowen [1 ]
Zhang, Xiangyu [2 ]
Tang, Renwu [1 ]
Yang, Juan [3 ]
机构
[1] Beijing Normal Univ, Sch Govt, Beijing 100875, Peoples R China
[2] Shandong Agr & Engn Univ, Sch Informat Sci & Engn, Jinan 251100, Peoples R China
[3] Beijing Univ Posts & Commun, Sch Sci, Beijing 100876, Peoples R China
关键词
neural network; reflected PDEs; high-dimensional problem; penalization method; OBSTACLE PROBLEMS; DISCRETIZATION; APPROXIMATIONS; AMERICAN; SYSTEMS;
D O I
10.3390/mca28040079
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
Reflected partial differential equations (PDEs) have important applications in financial mathematics, stochastic control, physics, and engineering. This paper aims to present a numerical method for solving high-dimensional reflected PDEs. In fact, overcoming the "dimensional curse" and approximating the reflection term are challenges. Some numerical algorithms based on neural networks developed recently fail in solving high-dimensional reflected PDEs. To solve these problems, firstly, the reflected PDEs are transformed into reflected backward stochastic differential equations (BSDEs) using the reflected Feyman-Kac formula. Secondly, the reflection term of the reflected BSDEs is approximated using the penalization method. Next, the BSDEs are discretized using a strategy that combines Euler and Crank-Nicolson schemes. Finally, a deep neural network model is employed to simulate the solution of the BSDEs. The effectiveness of the proposed method is tested by two numerical experiments, and the model shows high stability and accuracy in solving reflected PDEs of up to 100 dimensions.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Results and Questions on a Nonlinear Approximation Approach for Solving High-dimensional Partial Differential Equations
    Le Bris, C.
    Lelievre, T.
    Maday, Y.
    CONSTRUCTIVE APPROXIMATION, 2009, 30 (03) : 621 - 651
  • [42] Reduced basis ANOVA methods for partial differential equations with high-dimensional random inputs
    Liao, Qifeng
    Lin, Guang
    JOURNAL OF COMPUTATIONAL PHYSICS, 2016, 317 : 148 - 164
  • [43] Neural Networks to Solve Partial Differential Equations: A Comparison With Finite Elements
    Sacchetti, Andrea
    Bachmann, Benjamin
    Loffel, Kaspar
    Kunzi, Urs-Martin
    Paoli, Beatrice
    IEEE ACCESS, 2022, 10 : 32271 - 32279
  • [44] Three ways to solve partial differential equations with neural networks — A review
    Blechschmidt J.
    Ernst O.G.
    GAMM Mitteilungen, 2021, 44 (02)
  • [45] LordNet: An efficient neural network for learning to solve parametric partial differential equations without simulated data
    Huang, Xinquan
    Shi, Wenlei
    Gao, Xiaotian
    Wei, Xinran
    Zhang, Jia
    Bian, Jiang
    Yang, Mao
    Liu, Tie-Yan
    NEURAL NETWORKS, 2024, 176
  • [46] Application of multivariate bilinear neural network method to fractional partial differential equations
    Liu, Jian-Guo
    Zhu, Wen-Hui
    Wu, Ya-Kui
    Jin, Guo-Hua
    RESULTS IN PHYSICS, 2023, 47
  • [47] Dual Neural Network (DuNN) method for elliptic partial differential equations and systems
    Liu, Min
    Cai, Zhiqiang
    Ramani, Karthik
    JOURNAL OF COMPUTATIONAL AND APPLIED MATHEMATICS, 2025, 467
  • [48] High Order Deep Neural Network for Solving High Frequency Partial Differential Equations
    Chang, Zhipeng
    Li, Ke
    Zou, Xiufen
    Xiang, Xueshuang
    COMMUNICATIONS IN COMPUTATIONAL PHYSICS, 2022, 31 (02) : 370 - 397
  • [49] Deep Learning-Based Numerical Methods for High-Dimensional Parabolic Partial Differential Equations and Backward Stochastic Differential Equations
    E, Weinan
    Han, Jiequn
    Jentzen, Arnulf
    COMMUNICATIONS IN MATHEMATICS AND STATISTICS, 2017, 5 (04) : 349 - 380
  • [50] Deep Learning-Based Numerical Methods for High-Dimensional Parabolic Partial Differential Equations and Backward Stochastic Differential Equations
    Weinan E
    Jiequn Han
    Arnulf Jentzen
    Communications in Mathematics and Statistics, 2017, 5 : 349 - 380