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Weak-PDE-Net: Discovering Open-Form PDEs via Differentiable Symbolic Networks and Weak Formulation

About

Discovering governing Partial Differential Equations (PDEs) from sparse and noisy data is a challenging issue in data-driven scientific computing. Conventional sparse regression methods often suffer from two major limitations: (i) the instability of numerical differentiation under sparse and noisy data, and (ii) the restricted flexibility of a pre-defined candidate library. We propose Weak-PDE-Net, an end-to-end differentiable framework that can robustly identify open-form PDEs. Weak-PDE-Net consists of two interconnected modules: a forward response learner and a weak-form PDE generator. The learner embeds learnable Gaussian kernels within a lightweight MLP, serving as a surrogate model that adaptively captures system dynamics from sparse observations. Meanwhile, the generator integrates a symbolic network with an integral module to construct weak-form PDEs, avoiding explicit numerical differentiation and improving robustness to noise. To relax the constraints of the pre-defined library, we leverage Differentiable Neural Architecture Search strategy during training to explore the functional space, which enables the efficient discovery of open-form PDEs. The capability of Weak-PDE-Net in multivariable systems discovery is further enhanced by incorporating Galilean Invariance constraints and symmetry equivariance hypotheses to ensure physical consistency. Experiments on several challenging PDE benchmarks demonstrate that Weak-PDE-Net accurately recovers governing equations, even under highly sparse and noisy observations.

Xinxin Li, Xingyu Cui, Jin Qi, Juan Zhang, Da Li, Junping Yin• 2026

Related benchmarks

TaskDatasetResultRank
PDE DiscoveryNLS equation dataset
TPR100
18
PDE DiscoverySine-Gordon (SG) equation dataset
TPR100
10
PDE Discovery2D Wave equation
TPR100
10
PDE Discovery1D viscous Burgers equation
TPR100
10
PDE DiscoveryKuramoto-Sivashinsky (KS) Equation
TPR100
10
PDE DiscoveryKdV equation
TPR100
10
Partial Differential Equation Discovery2D Incompressible Navier-Stokes Equation Re=100 vorticity transport (test)
TPR100
8
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