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An Introduction to Adjoints and Output Error Estimation in Computational Fluid Dynamics (1712.00693v1)

Published 3 Dec 2017 in cs.CE, cs.NA, math.NA, physics.comp-ph, and physics.flu-dyn

Abstract: In recent years, the use of adjoint vectors in Computational Fluid Dynamics (CFD) has seen a dramatic rise. Their utility in numerous applications, including design optimization, data assimilation, and mesh adaptation has sparked the interest of both researchers and practitioners alike. In many of these fields, the concept of an adjoint is explained differently, with various notations and motivations employed. Further complicating matters is the existence of two seemingly different types of adjoints -- "continuous" and "discrete" -- as well as the more formal definition of adjoint operators employed in linear algebra and functional analysis. These issues can make the fundamental concept of an adjoint difficult to pin down. In these notes, we hope to clarify some of the ideas surrounding adjoint vectors and to provide a useful reference for both continuous and discrete adjoints alike. In particular, we focus on the use of adjoints within the context of output-based mesh adaptation, where the goal is to achieve accuracy in a particular quantity (or "output") of interest by performing targeted adaptation of the computational mesh. While this is our application of interest, the ideas discussed here apply directly to design optimization, data assimilation, and many other fields where adjoints are employed.

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