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Adaptive Model Reduction of High-Order Solutions of Compressible Flows via Optimal Transport

R. Loek Van Heyningen, Ngoc Cuong Nguyen, Patrick Blonigan, J. Peraire

2023International journal of computational fluid dynamics10 citationsDOIOpen Access PDF

Abstract

The solution of conservation laws with parametrised shock waves presents challenges for both high-order numerical methods and model reduction techniques. We introduce an r-adaptivity scheme based on optimal transport and apply it to develop reduced order models for compressible flows. The optimal transport theory allows us to compute high-order r-adaptive meshes from a starting reference mesh by solving the Monge–Ampère equation. A high-order discretization of the conservation laws enables high-order solutions to be computed on the resulting r-adaptive meshes. Furthermore, the Monge–Ampère solutions contain mappings that are used to reduce the spatial locality of the resulting solutions and make them more amenable to model reduction. We use a non-intrusive model reduction method to construct reduced order models of both the mesh and the solution. The procedure is demonstrated on three supersonic and hypersonic test cases, with the hybridisable discontinuous Galerkin method being used as the full order model.

Topics & Concepts

Reduction (mathematics)CompressibilityModel order reductionApplied mathematicsMechanicsOrder (exchange)Mathematical optimizationPhysicsComputer scienceMathematicsGeometryAlgorithmEconomicsFinanceProjection (relational algebra)Model Reduction and Neural NetworksComputational Fluid Dynamics and AerodynamicsFluid Dynamics and Turbulent Flows
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