<p>Adjoint methods allow to compute the gradient of a cost function at an expense that is independent of the number of design variables, thus representing an appealing tool to those who deal with large-scale gradient-based optimization processes. However, researchers in the field are currently facing difficulties related to poor convergence and high storage memory<br> requirements.<br> Both continuous and discrete adjoints require a fully converged solution to the primal problem. It is argued that, specifically in Computational Fluid Dynamics, the presence of numerical adjustments (e.g. non-orthogonal correctors) and segregated solution algorithms yields a solution that, while acceptable as a mere aerodynamics study, is not accurate enough ...
The adjoint approach in gradient-based optimization combined with computational fluid dynamics is co...
Methods and computing hardware advances have enabled accurate predictions of complex compressible tu...
Computational fluid dynamics is reaching a level of maturity that it can be used as a predictiv...
Adjoint methods allow to compute the gradient of a cost function at an expense that is independent o...
PhDIn the context of gradient-based numerical optimisation, the adjoint method is an e cient way of...
This paper explains how the solutions of appropriate adjoint equations can be used to estimate the e...
An exact discrete adjoint of an unstructured finite-volume solver for the RANS equations has been de...
Sensitivity analysis with the aim of design optimization is a growing area of interest in Computatio...
The importance of computer-based modeling in technical and industrial use is evident. Especially the...
Aerospace industry is increasingly relying on advanced numerical flow simulation tools in the early ...
An adjoint system of the Euler equations of gas dynamics is derived in order to solve aerodynamic sh...
Strides in modern computational fluid dynamics and leaps in high-power computing have led to unprece...
Because detailed aerodynamic shape optimizations still suffer from high computational costs, efficie...
The adjoint approach in gradient-based optimization combined with computational fluid dynamics is co...
We present a robust and efficient target-based mesh adaptation methodology, building on hy-bridized ...
The adjoint approach in gradient-based optimization combined with computational fluid dynamics is co...
Methods and computing hardware advances have enabled accurate predictions of complex compressible tu...
Computational fluid dynamics is reaching a level of maturity that it can be used as a predictiv...
Adjoint methods allow to compute the gradient of a cost function at an expense that is independent o...
PhDIn the context of gradient-based numerical optimisation, the adjoint method is an e cient way of...
This paper explains how the solutions of appropriate adjoint equations can be used to estimate the e...
An exact discrete adjoint of an unstructured finite-volume solver for the RANS equations has been de...
Sensitivity analysis with the aim of design optimization is a growing area of interest in Computatio...
The importance of computer-based modeling in technical and industrial use is evident. Especially the...
Aerospace industry is increasingly relying on advanced numerical flow simulation tools in the early ...
An adjoint system of the Euler equations of gas dynamics is derived in order to solve aerodynamic sh...
Strides in modern computational fluid dynamics and leaps in high-power computing have led to unprece...
Because detailed aerodynamic shape optimizations still suffer from high computational costs, efficie...
The adjoint approach in gradient-based optimization combined with computational fluid dynamics is co...
We present a robust and efficient target-based mesh adaptation methodology, building on hy-bridized ...
The adjoint approach in gradient-based optimization combined with computational fluid dynamics is co...
Methods and computing hardware advances have enabled accurate predictions of complex compressible tu...
Computational fluid dynamics is reaching a level of maturity that it can be used as a predictiv...