GlueNN: gluing patchwise analytic solutions with neural networks
- URL: http://arxiv.org/abs/2601.05889v1
- Date: Fri, 09 Jan 2026 16:07:43 GMT
- Title: GlueNN: gluing patchwise analytic solutions with neural networks
- Authors: Doyoung Kim, Donghee Lee, Hye-Sung Lee, Jiheon Lee, Jaeok Yi,
- Abstract summary: A common strategy is to divide the domain into several regions and simplify the equation in each region.<n>This patching procedure can fail to reproduce the correct solution, since the approximate forms may break down near the boundaries.<n>We propose a learning framework in which the integration constants of analytic solutions are promoted to scale-dependent functions.
- Score: 6.348235100905359
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In many problems in physics and engineering, one encounters complicated differential equations with strongly scale-dependent terms for which exact analytical or numerical solutions are not available. A common strategy is to divide the domain into several regions (patches) and simplify the equation in each region. When approximate analytic solutions can be obtained in each patch, they are then matched at the interfaces to construct a global solution. However, this patching procedure can fail to reproduce the correct solution, since the approximate forms may break down near the matching boundaries. In this work, we propose a learning framework in which the integration constants of asymptotic analytic solutions are promoted to scale-dependent functions. By constraining these coefficient functions with the original differential equation over the domain, the network learns a globally valid solution that smoothly interpolates between asymptotic regimes, eliminating the need for arbitrary boundary matching. We demonstrate the effectiveness of this framework in representative problems from chemical kinetics and cosmology, where it accurately reproduces global solutions and outperforms conventional matching procedures.
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