Data-Driven Optimization Approach for Inverse Problems : Application to Turbulent Mixed-Convection Flows
M. Oulghelou, C. Beghein, C. Allery

TL;DR
This paper introduces a data-driven genetic algorithm that uses reduced-order modeling and interpolation techniques to efficiently solve inverse problems in turbulent mixed-convection flows, achieving near-real-time results.
Contribution
It presents a novel combination of POD, Riemannian barycentric interpolation, and genetic algorithms for fast inverse flow parameter identification.
Findings
Achieves solution approximations in less than two minutes.
Effectively identifies inflow parameters for turbulent flows.
Reduces computational demands compared to traditional CFD-based methods.
Abstract
Optimal control of turbulent mixed-convection flows has attracted considerable attention from researchers. Numerical algorithms such as Genetic Algorithms (GAs) are powerful tools that allow to perform global optimization. These algorithms are particularly of great interest in complex optimization problems where cost functionals may lack smoothness and regularity. In turbulent flow optimization, the hybridization of GA with high fidelity Computational Fluid Dynamics (CFD) is extremely demanding in terms of computational time and memory storage. Thus, alternative approaches aiming to alleviate these requirements are of great interest. Nowadays, data driven approaches gained attention due to their potential in predicting flow solutions based only on preexisting data. In the present paper, we propose a near-real time data-driven genetic algorithm (DDGA) for inverse parameter identification…
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Taxonomy
TopicsModel Reduction and Neural Networks · Heat Transfer and Optimization · Advanced Multi-Objective Optimization Algorithms
