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FP64 is All You Need: Rethinking Failure Modes in Physics-Informed Neural Networks

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Physics Informed Neural Networks (PINNs) often exhibit failure modes in which the PDE residual loss converges while the solution error stays large, a phenomenon traditionally blamed on local optima separated from the true solution by steep loss barriers. We challenge this understanding by demonstrate that the real culprit is insufficient arithmetic precision: with standard FP32, the LBFGS optimizer prematurely satisfies its convergence test, freezing the network in a spurious failure phase. Simply upgrading to FP64 rescues optimization, enabling vanilla PINNs to solve PDEs without any failure modes. These results reframe PINN failure modes as precision induced stalls rather than inescapable local minima and expose a three stage training dynamic unconverged, failure, success whose boundaries shift with numerical precision. Our findings emphasize that rigorous arithmetic precision is the key to dependable PDE solving with neural networks.

Chenhui Xu, Dancheng Liu, Amir Nassereldine, Jinjun Xiong• 2025

Related benchmarks

TaskDatasetResultRank
Solving PDEAllen-Cahn
Relative Error0.016
21
Solving partial differential equationsConvection
Loss5.00e-6
4
Solving partial differential equationsWave
Loss4.20e-5
4
Solving partial differential equationsReaction
Loss1.00e-5
4
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