Abstract

Due to their flexibility, soft-bodied robots can potentially achieve rich and various behaviors within a single body. However, to date, no methodology has effectively harnessed these robots to achieve such diverse desired functionalities. Controllers that accomplish only a limited range of behaviors in such robots have been handcrafted. Moreover, the behaviors of these robots should be determined through body–environment interactions because an appropriate behavior may not always be manifested even if the body dynamics are given. Therefore, we have proposed SenseCPG-PGPE, a method for automatically designing behaviors for caterpillar-like soft-bodied robots. This method optimizes mechanosensory feedback to a central pattern generator (CPG)-based controller, which controls actuators in a robot, using policy gradients with parameter-based exploration (PGPE). In this article, we deeply investigated this method. We found that PGPE can optimize a CPG-based controller for soft-bodied robots that exhibit viscoelasticity and large deformation, whereas other popular policy gradient methods, such as trust region policy optimization and proximal policy optimization, cannot. Scalability of the method was confirmed using simulation as well. Although SenseCPG-PGPE uses a CPG-based controller, it can achieve nonsteady motion such as climbing a step in a simulated robot. The approach also resulted in distinctive behaviors depending on different body–environment conditions. These results demonstrate that the proposed method enables soft robots to explore a variety of behaviors automatically.

Highlights

  • Bioinspired soft-bodied robots[1] should be controlled in a bioinspired manner

  • We found that policy gradients with parameter-based exploration (PGPE) can optimize a central pattern generator (CPG)-based controller for soft-bodied robots that exhibit viscoelasticity and large deformation, whereas other popular policy gradient methods, such as trust region policy optimization and proximal policy optimization, cannot

  • We investigated SenseCPG-PGPE, which is a method for automatically exploring behaviors of a caterpillar-like soft-bodied robot

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Summary

Introduction

Bioinspired soft-bodied robots[1] should be controlled in a bioinspired manner. Conventional control schemes are not applicable to soft-bodied robots because these robots have considerably more degrees of freedom due to their significant flexibility. A central pattern generator (CPG)based controller, which is a bioinspired control method based on parts of the neural system in animals,[3] is a promising candidate to harness and direct the complexity of these robots This control method does not face the above-mentioned issues because it does not demand the precise design of a movement trajectory.[4,5,6,7,8] It invokes automatic behavior switching according to the body and environment dynamics.[9,10] Owaki and Ishiguro[10] realized automatic switching of gait patterns among walking, trotting, and galloping in a quadruped robot with a sensor feedback integrated CPG-

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