An optimization methodology based on neural networks was developed for use in 2D optimal shape design problems. Neural networks were used as a parameterization scheme to represent the shape function, and an edge-based high-resolution scheme for the solution of the compressible Euler equations was used to model the flow around the shape. The global system incorporates neural networks and the Euler fluid solver into the C++ Flood optimization framework containing a library of optimization algorithms. The optimization scheme was applied to a minimal drag problem in an unconstrained optimization case and a constrained case in hypersonic flow using evolutionary training algorithms. The results indicate that the minimum drag problem is solved to ...
The Direct Numerical Optimization (DNO) approach for airfoil shape design requires the integration o...
A method to reduce the dimension of the initial search space in an optimizati- on problem is propose...
This article presents an optimisation framework that uses stochastic multi-objective optimisation, c...
An optimization methodology based on neural networks was developed for use in 2D optimal shape desig...
An efficient computational framework is presented and applied to the inverse aerodynamic shape desig...
This work proposes a novel multi-output neural network for the prediction of the lift coefficient of...
A novel technique to accelerate optimization-driven aerodynamic shape design is presented in the pap...
Evolutionary algorithms (EA) were first introduced in the nineteen-seventies for optimizing technica...
project ”Fast flow-field prediction using deep neural networks for solving fluid-structure interact...
A novel technique to accelerate optimization-driven aerodynamic shape design is presented in the pap...
This paper presents an optimization method integrating automated CAD-based Computational Fluid Dynam...
Aerodynamic shape optimization has many industrial applications. Existing methods, however, are so c...
Machine learning (ML) has been increasingly used to aid aerodynamic shape optimization (ASO), thanks...
An aerodynamic shape optimization method that uses an evolutionary algorithm known at Differential E...
Deep Reinforcement Learning (DRL) has recently spread into a range of domains within physics and eng...
The Direct Numerical Optimization (DNO) approach for airfoil shape design requires the integration o...
A method to reduce the dimension of the initial search space in an optimizati- on problem is propose...
This article presents an optimisation framework that uses stochastic multi-objective optimisation, c...
An optimization methodology based on neural networks was developed for use in 2D optimal shape desig...
An efficient computational framework is presented and applied to the inverse aerodynamic shape desig...
This work proposes a novel multi-output neural network for the prediction of the lift coefficient of...
A novel technique to accelerate optimization-driven aerodynamic shape design is presented in the pap...
Evolutionary algorithms (EA) were first introduced in the nineteen-seventies for optimizing technica...
project ”Fast flow-field prediction using deep neural networks for solving fluid-structure interact...
A novel technique to accelerate optimization-driven aerodynamic shape design is presented in the pap...
This paper presents an optimization method integrating automated CAD-based Computational Fluid Dynam...
Aerodynamic shape optimization has many industrial applications. Existing methods, however, are so c...
Machine learning (ML) has been increasingly used to aid aerodynamic shape optimization (ASO), thanks...
An aerodynamic shape optimization method that uses an evolutionary algorithm known at Differential E...
Deep Reinforcement Learning (DRL) has recently spread into a range of domains within physics and eng...
The Direct Numerical Optimization (DNO) approach for airfoil shape design requires the integration o...
A method to reduce the dimension of the initial search space in an optimizati- on problem is propose...
This article presents an optimisation framework that uses stochastic multi-objective optimisation, c...