4.5 Article

Gait Optimization of a Quadruped Robot Using Evolutionary Computation

Journal

JOURNAL OF BIONIC ENGINEERING
Volume 18, Issue 2, Pages 306-318

Publisher

SPRINGER SINGAPORE PTE LTD
DOI: 10.1007/s42235-021-0026-y

Keywords

bionic robot; evolutionary computation; genetic algorithm; gait optimization; parameter perturbation; convergence index

Funding

  1. National Research Foundation of Korea (NRF) - Korean Government (MSIT) [NRF-2019R1A2 C2084677]
  2. UNIST (Ulsan National Institute of Science and Technology) [1.210052.01]

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Evolutionary Computation (EC) is used for gait optimization in quadruped robots, introducing foot placement perturbation for atypical solution search range and a convergence index to prevent premature cessation of learning. The proposed algorithm shows better fitness and a wider search range compared to conventional algorithms in optimizing walking performances of robots.
Evolutionary Computation (EC) has strengths in terms of computation for gait optimization. However, conventional evolutionary algorithms use typical gait parameters such as step length and swing height, which limit the trajectory deformation for optimization of the foot trajectory. Furthermore, the quantitative index of fitness convergence is insufficient. In this paper, we perform gait optimization of a quadruped robot using foot placement perturbation based on EC. The proposed algorithm has an atypical solution search range, which is generated by independent manipulation of each placement that forms the foot trajectory. A convergence index is also introduced to prevent premature cessation of learning. The conventional algorithm and the proposed algorithm are applied to a quadruped robot; walking performances are then compared by gait simulation. Although the two algorithms exhibit similar computation rates, the proposed algorithm shows better fitness and a wider search range. The evolutionary tendency of the walking trajectory is analyzed using the optimized results, and the findings provide insight into reliable leg trajectory design.

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