In this paper, we propose hybrid data-driven ROM closures for fluid flows.
These new ROM closures combine two fundamentally different strategies: (i)
purely data-driven ROM closures, both for the velocity and the pressure; and
(ii) physically based, eddy viscosity data-driven closures, which model the
energy transfer in the system. The first strategy consists in the addition of
closure/correction terms to the governing equations, which are built from the
available data. The second strategy includes turbulence modeling by adding eddy
viscosity terms, which are determined by using machine learning techniques. The
two strategies are combined for the first time in this paper to investigate a
two-dimensional flow past a circular cylinder at Re=50000. Our numerical
results show that the hybrid data-driven ROM is more accurate than both the
purely data-driven ROM and the eddy viscosity ROM.Comment: arXiv admin note: text overlap with arXiv:2205.1511