Virtual boundary integral neural network for three-dimensional exterior acoustic problems
arXiv cs.LG / 4/22/2026
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Key Points
- The paper proposes a Virtual Boundary Integral Neural Network (VBINN) tailored for three-dimensional exterior acoustic problems by introducing a virtual boundary inside a scatterer or vibrating body.
- It models the source density using a neural network while coupling it with the acoustic fundamental solution, ensuring the Sommerfeld radiation condition is satisfied by construction.
- By separating the integration surface from the physical boundary, the method avoids singular or near-singular kernel evaluations typical of conventional boundary-integral-based learning approaches.
- The geometric parameters of the virtual boundary are jointly optimized with the neural network during training to reduce sensitivity to boundary placement.
- Numerical experiments for acoustic scattering, multi-body interactions, and underwater propagation match analytical and COMSOL results, and the Burton–Miller extension improves stability near characteristic frequencies.
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