Abstract

Existing adaptive locomotion control mechanisms for legged robots are usually aimed at one specific type of adaptation and rarely combined with others. Adaptive mechanisms thus stay at a conceptual level without their coupling effect with other mechanisms being investigated. However, we hypothesize that the combination of adaptation mechanisms can be exploited for enhanced and more efficient locomotion control as in biological systems. Therefore, in this work, we present a central pattern generator (CPG) based locomotion controller integrating both a frequency and motor pattern adaptation mechanisms. We use the state-of-the-art Dual Integral Learner for frequency adaptation, which can automatically and quickly adapt the CPG frequency, enabling the entire motor pattern or output signal of the CPG to be followed at a proper high frequency with low tracking error. Consequently, the legged robot can move with high energy efficiency and perform the generated locomotion with high precision. The versatile state-of-the-art CPG-RBF network is used as a motor pattern adaptation mechanism. Using this network, the motor patterns or joint trajectories can be adapted to fit the robot's morphology and perform sensorimotor integration enabling online motor pattern adaptation based on sensory feedback. The results show that the two adaptation mechanisms can be combined for adaptive locomotion control of a hexapod robot in a complex environment. Using the CPG-RBF network for motor pattern adaptation, the hexapod learned basic straight forward walking, steering, and step climbing. In general, the frequency and motor pattern mechanisms complement each other well and their combination can be seen as an essential step toward further studies on adaptive locomotion control.

Highlights

  • Adaptation is an essential aspect of legged locomotion

  • We propose for the first time an adaptive central pattern generator (CPG)-based locomotion controller that combines two state-ofthe-art CPG adaptation mechanisms for frequency and motor pattern adaptations

  • The second closed-loop sub-behavior module encodes a step climbing behavior (Wb2 ). It uses binary sensory feedback from an optic distance sensor mounted at the front of Modular Robot Framework (MORF)

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Summary

Introduction

Adaptation is an essential aspect of legged locomotion. By skillfully manipulating the movement, animals can adapt their behavior in accordance with the environment, morphological variations, and external and intrinsic perturbations. This is a vital trait when moving in complex and unstructured environments where legs are especially advantageous. There have been many attempts to create adaptive locomotion controllers. One promising approach is to use artificial central pattern generators (CPGs), inspired by their biological counterparts. These CPGs can generate rhythmic motor signals and are, when coupled with sensory feedback, able to adapt their outputs

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