The hierarchical controller based on reinforcement learning algorithm for a multimodule reconfigurable mobile walking robot

Authors

  • Rustem Anvarovich Munasypov
  • Timur Rashitovich Shahmametev
  • Sergey Sergeevich Moskvichev
  • Ilgiz Hanifovich Hamadeev

Keywords:

potential field; reinforcement learning; vortex field; reconfigurable mobile robot

Abstract

 Walking robots are able to traverse a variety of obstacles and move around complex landforms. However, the implementation of all the features of the walking configuration is only possible by using a sufficiently complex controller. The article describes a reinforcement learning method applied to solving the problem of traversing obstacles by a reconfigurable walking robot. The algorithm is based on a two-level hierarchical decomposition of the problem, where the high-level controller makes decisions on the trajectory, and the low-level controller moves the limbs into the desired positions. This approach allows the robot to successfully overcome obstacles and move around in unknown environments.  

Published

2018-10-12

Issue

Section

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