Abstract
In this work, we extend the generalized conditional symmetry enhanced physics-informed neural network (gsPINN) to study the partial differential equations (PDEs) with Robin initial/boundary conditions. The gsPINN incorporates the inherent physical laws, i.e., generalized conditional symmetry of PDEs, into the loss function of PINN and thus learns higher accuracy numerical solutions than PINN with fewer training points and simpler architecture of network. More specifically, we compare the performances of PINN and gsPINN to solve the KdV-like PDEs and show that gsPINN outperforms PINN in terms of the accuracy of learned solutions. Moreover, for the problem of PDEs together with what form of initial/boundary conditions are admitted by the known generalized conditional symmetry, we use the gsPINN method to learn the undetermined functions in Robin initial/boundary conditions and demonstrate the superiorities and robustness of gsPINN over PINN. Our results provide an alternative way for utilizing the deep neural network to study the problems of generalized conditional symmetry of PDEs.
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The data sets generated during and/or analyzed during the current study are available from the corresponding author on reasonable request.
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Acknowledgements
The paper is supported by the Bei**g Natural Science Foundation (No. 1222014), the National Natural Science Foundation of China (No. 11671014) and the Cross Research Project for Minzu University of China (No. 2021JCXK04).
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Zhang, H., Cai, SJ., Li, JY. et al. Enforcing generalized conditional symmetry in physics-informed neural network for solving the KdV-like equation with Robin initial/boundary conditions. Nonlinear Dyn 111, 10381–10392 (2023). https://doi.org/10.1007/s11071-023-08361-6
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DOI: https://doi.org/10.1007/s11071-023-08361-6