Development of a Highly Efficient Trajectory Planning Algorithm in Backfilling Task for Autonomous Excavators by Imitation of Experts and Numerical Optimization

  • Tsuzuki Ryuji
    Robotics Technology Department, Technology Research Center, Sumitomo Heavy Industries, Ltd.
  • Hara Kosuke
    Robotics Technology Department, Technology Research Center, Sumitomo Heavy Industries, Ltd.
  • Usui Dotaro
    Robotics Technology Department, Technology Research Center, Sumitomo Heavy Industries, Ltd.

この論文をさがす

抄録

<p>The objective of this study is to achieve high efficiency in autonomous hydraulic excavators by imitating the bucket trajectory operated by an expert. For this purpose, bucket trajectories of experts were collected, and a trajectory was planned using machine learning of a model that relates measured soil shapes to the bucket trajectories of the experts. In this study, we proposed a hierarchical model consisting of a model for estimating movement and a trajectory, with a focus on the fact that different trajectories are generated for the same soil shape as a result of the analysis of the skilled persons’ movements. The trajectory output from the model was replanned to have a smooth trajectory using numerical optimization. For the backfilling task, the error from the target shape and the amount of soil transported per movement were compared with those of an expert. The proposed method increased the error from the target shape by approximately 66%, while the amount of soil transported was approximately 58% of that of the experts.</p>

収録刊行物

参考文献 (16)*注記

もっと見る

詳細情報 詳細情報について

問題の指摘

ページトップへ