TY - JOUR
T1 - PT-symmetric PINN for integrable nonlocal equations
T2 - Forward and inverse problems
AU - Peng, Wei Qi
AU - Chen, Yong
N1 - Publisher Copyright:
© 2024 Author(s).
PY - 2024/4
Y1 - 2024/4
N2 - Since the P T -symmetric nonlocal equations contain the physical information of the P T -symmetric, it is very appropriate to embed the physical information of the P T -symmetric into the loss function of PINN, named PTS-PINN. For general P T -symmetric nonlocal equations, especially those equations involving the derivation of nonlocal terms due to the existence of nonlocal terms, directly using the original PINN method to solve such nonlocal equations will face certain challenges. This problem can be solved by the PTS-PINN method, which can be illustrated in two aspects. First, we treat the nonlocal term of the equation as a new local component so that the equation is coupled at this time. In this way, we successfully avoid differentiating nonlocal terms in neural networks. On the other hand, in order to improve the accuracy, we make a second improvement, which is to embed the physical information of the P T -symmetric into the loss function. Through a series of independent numerical experiments, we evaluate the efficacy of PTS-PINN in tackling the forward and inverse problems for the nonlocal NLS equation, the nonlocal derivative NLS equation, the nonlocal ( 2 + 1 ) -dimensional NLS equation, and the nonlocal three-wave interaction systems. The numerical experiments demonstrate that PTS-PINN has good performance. In particular, PTS-PINN has also demonstrated an extraordinary ability to learn large space-time scale rogue waves for nonlocal equations.
AB - Since the P T -symmetric nonlocal equations contain the physical information of the P T -symmetric, it is very appropriate to embed the physical information of the P T -symmetric into the loss function of PINN, named PTS-PINN. For general P T -symmetric nonlocal equations, especially those equations involving the derivation of nonlocal terms due to the existence of nonlocal terms, directly using the original PINN method to solve such nonlocal equations will face certain challenges. This problem can be solved by the PTS-PINN method, which can be illustrated in two aspects. First, we treat the nonlocal term of the equation as a new local component so that the equation is coupled at this time. In this way, we successfully avoid differentiating nonlocal terms in neural networks. On the other hand, in order to improve the accuracy, we make a second improvement, which is to embed the physical information of the P T -symmetric into the loss function. Through a series of independent numerical experiments, we evaluate the efficacy of PTS-PINN in tackling the forward and inverse problems for the nonlocal NLS equation, the nonlocal derivative NLS equation, the nonlocal ( 2 + 1 ) -dimensional NLS equation, and the nonlocal three-wave interaction systems. The numerical experiments demonstrate that PTS-PINN has good performance. In particular, PTS-PINN has also demonstrated an extraordinary ability to learn large space-time scale rogue waves for nonlocal equations.
UR - https://www.scopus.com/pages/publications/85189706446
U2 - 10.1063/5.0197939
DO - 10.1063/5.0197939
M3 - 文章
C2 - 38579150
AN - SCOPUS:85189706446
SN - 1054-1500
VL - 34
JO - Chaos
JF - Chaos
IS - 4
ER -