Zhang Haoran, Ji Xia, Hu Donghao
Solving large-wavenumber Helmholtz equations with traditional numerical methods faces an inherent trade-off between computational accuracy and efficiency. This paper proposes Frequency-Enhanced High-order ReLU-KAN (FE-HRKAN). It introduces a learnable adaptive frequency modulation mechanism into the existing High-order ReLU-KAN (HRKAN) framework, expanding the input features to a combination of the original variables and parameterized high-frequency oscillatory features. The paper proves HRKAN’s spectral limitations and demonstrates the extended high-frequency expressiveness of FE-HRKAN, ensuring that FE-HRKAN enhances the capability to represent high-frequency oscillations while maintaining the original performance of HRKAN. Experimental results show that in function approximation tasks, FE-HRKAN reduces the L2 relative error for approximating high-frequency oscillatory functions by two orders of magnitude compared to the baseline HRKAN model, while also reducing the L2 relative error for approximating non-oscillatory functions by 34%. In solving large-wavenumber Helmholtz equations, FE-HRKAN achieves L2 relative errors on the order of 10-3 to 10-4 across wavenumbers ranging from 5 to 1000, reducing errors by 3 to 4 orders of magnitude compared to HRKAN in large-wavenumber scenarios.