MH-RG DeepONet adds parallel residual-gated conditioning pathways to DeepONet to achieve lower error and better phase coherence on nonlinear wave benchmarks by modulating state predictions with physical descriptors.
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A spatiotemporally decoupled physics-informed Stone-Weierstrass neural operator for stable long-time prediction of time-dependent parametric PDEs.
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Multi-Head Residual-Gated DeepONet for Coherent Nonlinear Wave Dynamics
MH-RG DeepONet adds parallel residual-gated conditioning pathways to DeepONet to achieve lower error and better phase coherence on nonlinear wave benchmarks by modulating state predictions with physical descriptors.
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Spatiotemporal decoupled physics-informed Stone-Weierstrass neural operator for long-time prediction of time-dependent parametric PDEs
A spatiotemporally decoupled physics-informed Stone-Weierstrass neural operator for stable long-time prediction of time-dependent parametric PDEs.