CSD-PINN: a complex-symmetric, dynamic-weighted physics-informed neural network for parameter identification in high-order nonlinear Schrödinger equations
Key Points
Effective parameter identification achieved through a novel physics-informed neural network.
The approach accurately solves high-order nonlinear Schrödinger equations, indicating a promising new method.
This method employs dynamic weighting and complex symmetry to enhance identification precision.
Highlights potential applications in various fields, such as quantum mechanics and photonics, supporting further advancements.
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CSD-PINN: a complex-symmetric, dynamic-weighted physics-informed neural network for parameter identification in high-order nonlinear Schrödinger equations | Synapse