2022 Annual Meeting
(542c) A Data-Driven Approach to Determining Problem Well-Posedness
Authors
Another apparent advantage is that the variational solution of the PINN problem will return results even if the original problem is not well posed (whether due to overspecification of underspecification of constraints). However, though the method will produce an approximant at all domain locations, and a well-trained PINN will extrapolate reasonably to all locations where the DE-residual term is enforced, this does not mean that the usual issues of well-posedness, critical for DNS, are absent for PINNs. Here, we explore (for both the under-constrained and the over-constrained case) how the lack of well-posedness affects the approximant produced by the PINN training.
In particular, we relate the richness of variational solutions to the number of prescribed characteristics in wave-type problems, and draw analogies to randomized linear algebra development.
We use this variational approach for PINNs, but also for more traditional numerical discretizations, and conclude with some recommendations on metrics for diagnosing over- and under-determinedness in PINN training.
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