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Multi-condition multi-objective optimization using deep reinforcement learning

Machine Learning 2022-05-25 v1 Fluid Dynamics

Abstract

A multi-condition multi-objective optimization method that can find Pareto front over a defined condition space is developed for the first time using deep reinforcement learning. Unlike the conventional methods which perform optimization at a single condition, the present method learns the correlations between conditions and optimal solutions. The exclusive capability of the developed method is examined in the solutions of a novel modified Kursawe benchmark problem and an airfoil shape optimization problem which include nonlinear characteristics which are difficult to resolve using conventional optimization methods. Pareto front with high resolution over a defined condition space is successfully determined in each problem. Compared with multiple operations of a single-condition optimization method for multiple conditions, the present multi-condition optimization method based on deep reinforcement learning shows a greatly accelerated search of Pareto front by reducing the number of required function evaluations. An analysis of aerodynamics performance of airfoils with optimally designed shapes confirms that multi-condition optimization is indispensable to avoid significant degradation of target performance for varying flow conditions.

Keywords

Cite

@article{arxiv.2110.05945,
  title  = {Multi-condition multi-objective optimization using deep reinforcement learning},
  author = {Sejin Kim and Innyoung Kim and Donghyun You},
  journal= {arXiv preprint arXiv:2110.05945},
  year   = {2022}
}

Comments

46 pages, 8 figures, 1 algorithm