Applied Sciences (Oct 2021)

Data-Driven Reinforcement-Learning-Based Automatic Bucket-Filling for Wheel Loaders

  • Jianfei Huang,
  • Dewen Kong,
  • Guangzong Gao,
  • Xinchun Cheng,
  • Jinshi Chen

DOI
https://doi.org/10.3390/app11199191
Journal volume & issue
Vol. 11, no. 19
p. 9191

Abstract

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Automation of bucket-filling is of crucial significance to the fully automated systems for wheel loaders. Most previous works are based on a physical model, which cannot adapt to the changeable and complicated working environment. Thus, in this paper, a data-driven reinforcement-learning (RL)-based approach is proposed to achieve automatic bucket-filling. An automatic bucket-filling algorithm based on Q-learning is developed to enhance the adaptability of the autonomous scooping system. A nonlinear, non-parametric statistical model is also built to approximate the real working environment using the actual data obtained from tests. The statistical model is used for predicting the state of wheel loaders in the bucket-filling process. Then, the proposed algorithm is trained on the prediction model. Finally, the results of the training confirm that the proposed algorithm has good performance in adaptability, convergence, and fuel consumption in the absence of a physical model. The results also demonstrate the transfer learning capability of the proposed approach. The proposed method can be applied to different machine-pile environments.

Keywords