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wPINNs: Weak Physics informed neural networks for approximating entropy solutions of hyperbolic conservation laws

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arxiv 2207.08483 v1 pith:FJOTFRML submitted 2022-07-18 math.NA cs.LGcs.NAmath.AP

wPINNs: Weak Physics informed neural networks for approximating entropy solutions of hyperbolic conservation laws

classification math.NA cs.LGcs.NAmath.AP
keywords solutionswpinnsapproximatingentropynetworksneuralpinnsaccurate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Physics informed neural networks (PINNs) require regularity of solutions of the underlying PDE to guarantee accurate approximation. Consequently, they may fail at approximating discontinuous solutions of PDEs such as nonlinear hyperbolic equations. To ameliorate this, we propose a novel variant of PINNs, termed as weak PINNs (wPINNs) for accurate approximation of entropy solutions of scalar conservation laws. wPINNs are based on approximating the solution of a min-max optimization problem for a residual, defined in terms of Kruzkhov entropies, to determine parameters for the neural networks approximating the entropy solution as well as test functions. We prove rigorous bounds on the error incurred by wPINNs and illustrate their performance through numerical experiments to demonstrate that wPINNs can approximate entropy solutions accurately.

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