Birgit Hillebrecht: A rigorous framework to certify predictions from physics-informed neural networks

Datum predavanja: četvrtak, 18.6.2026.
Vrijeme predavanja: 11h u B06

Birgit Hillebrecht, Universität Stuttgart
Title: A rigorous framework to certify predictions from physics-informed neural networks

Abstract:
Since physics-informed neural networks (PINNs) were introduced and their feasibility demonstrated, the topic has attracted growing attention and has been investigated, beyond others, with respect to its a priori approximation capabilities. While a priori results quantify the expressive power of PINNs, they do not guarantee the reliability of a concrete trained instance. Hence, for PINNs to serve as viable alternatives to classical numerical schemes, the availability of rigorous a posteriori error bounds that certify the prediction are essential.

We address this need for certification for PINNs as surrogate models to abstract linear boundary- and initial-value problems (BIVP) by deriving two a posteriori error bounds for the PINN prediction. We leverage for one error estimator the concept of input-to-state stability for infinite-dimensional systems and the therein used gain bounds. Since these gain bounds are often not analytically accessible, we further derive approximation results to retrieve the gain bounds from numerical discretization.

Predhodni članakNATJEČAJ za prijam u radni odnos na određeno vrijeme na suradničko radno mjesto : rad na projektu Conduction