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Constraint instabilities in first-order viscous relativistic fluids (2506.06430v1)

Published 6 Jun 2025 in gr-qc

Abstract: Relativistic hydrodynamics provides a solid framework for evolving matter and energy in a wide variety of phenomena. Nevertheless, the inclusion of dissipative effects in realistic scenarios through causal, stable, and well-posed theories still constitutes an open problem. In this paper, we point out that the first-order reduction originally proposed by Bemfica, Disconzi, Noronha and Kovtun (BDNK) for proving the local well-posedness of conformally-invariant viscous fluids in Sobolev spaces, admits a set of differential constraints which do not propagate along evolution. To see so, we first show analytically that this is the case for uniform-velocity configurations. Motivated by this result, we perform numerical simulations of the BDNK first-order reduction restricted to plane-symmetric configurations in Minkowski spacetime. We report on initial data sets which satisfy the constraints, but display exponential grow at early times. Thus, although the principal part of the reduction is diagonalizable with real eigenvalues --as proved by BDNK--, the corresponding differential constraints appearing from it are not conserved along evolution. This result suggests that an alternative path is needed to prove the strong-hyperbolicity for the conformal version of the theory.

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