AIP Advances (Aug 2021)

Multi-object aerodynamic design optimization using deep reinforcement learning

  • Xinyu Hui,
  • Hui Wang,
  • Wenqiang Li,
  • ,
  • Junqiang Bai,
  • Fei Qin,
  • Guoqiang He

DOI
https://doi.org/10.1063/5.0058088
Journal volume & issue
Vol. 11, no. 8
pp. 085311 – 085311-9

Abstract

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Aerodynamic design optimization is a key aspect in aircraft design. The further evolution of advanced aircraft derivatives requires a powerful optimization toolbox. Reinforcement learning (RL) is a powerful optimization tool but has rarely been utilized in the aerodynamic design. It can potentially obtain results similar to those of a human designer, by accumulating experience from training. In this work, a popular RL method called proximal policy optimization (PPO) is proposed to investigate multi-object aerodynamic design optimization. By observing the aerodynamic performances of different airfoils, the PPO updates a reasonable policy to generate the optimal airfoils in a single step. In a Pareto optimization problem with constraints, the PPO requires only 15% of the computational time of the non-dominated sorted genetic algorithm (II) to achieve the same accuracy. The results from testing show that the agent learns a policy that can achieve ∼4.3%–10.1% improvements of the aerodynamic performance compared with the results of baseline.