UniPINN: A Unified PINN Framework for Multi-task Learning of Diverse Navier-Stokes Equations
arXiv cs.CV / 3/12/2026
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Key Points
- UniPINN introduces a unified multi-flow PINN framework that separates universal physical laws from flow-specific features via a shared–specialized architecture.
- It adds a cross-flow attention mechanism to reinforce relevant patterns while suppressing task-irrelevant interference across multiple Navier-Stokes flows, reducing negative transfer.
- It uses a dynamic loss allocation strategy to balance heterogeneous objectives and stabilize training in multi-task, multi-flow settings.
- Extensive experiments on three canonical flows show improved prediction accuracy and balanced performance across regimes compared to existing approaches.
- The authors will release the source code on GitHub, signaling practical adoption and further research impact in CFD and PINN communities.
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