Search Results for author: Dominik Sturm

Found 3 papers, 0 papers with code

Learning locally dominant force balances in active particle systems

no code implementations27 Jul 2023 Dominik Sturm, Suryanarayana Maddu, Ivo F. Sbalzarini

We use a combination of unsupervised clustering and sparsity-promoting inference algorithms to learn locally dominant force balances that explain macroscopic pattern formation in self-organized active particle systems.

Inverse-Dirichlet Weighting Enables Reliable Training of Physics Informed Neural Networks

no code implementations2 Jul 2021 Suryanarayana Maddu, Dominik Sturm, Christian L. Müller, Ivo F. Sbalzarini

We characterize and remedy a failure mode that may arise from multi-scale dynamics with scale imbalances during training of deep neural networks, such as Physics Informed Neural Networks (PINNs).

STENCIL-NET: Data-driven solution-adaptive discretization of partial differential equations

no code implementations15 Jan 2021 Suryanarayana Maddu, Dominik Sturm, Bevan L. Cheeseman, Christian L. Müller, Ivo F. Sbalzarini

Often, this requires high-resolution or adaptive discretization grids to capture relevant spatio-temporal features in the PDE solution, e. g., in applications like turbulence, combustion, and shock propagation.

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