Learning Directed Locomotion in Modular Robots with Evolvable Morphologies

01/21/2020
by   Gongjin Lan, et al.
5

We generalize the well-studied problem of gait learning in modular robots in two dimensions. Firstly, we address locomotion in a given target direction that goes beyond learning a typical undirected gait. Secondly, rather than studying one fixed robot morphology we consider a test suite of different modular robots. This study is based on our interest in evolutionary robot systems where both morphologies and controllers evolve. In such a system, newborn robots have to learn to control their own body that is a random combination of the bodies of the parents. We apply and compare two learning algorithms, Bayesian optimization and HyperNEAT. The results of the experiments in simulation show that both methods successfully learn good controllers, but Bayesian optimization is more effective and efficient. We validate the best learned controllers by constructing three robots from the test suite in the real world and observe their fitness and actual trajectories. The obtained results indicate a reality gap that depends on the controllers and the shape of the robots, but overall the trajectories are adequate and follow the target directions successfully.

READ FULL TEXT

page 6

page 15

page 22

page 25

research
10/19/2020

Learning Locomotion Skills in Evolvable Robots

The challenge of robotic reproduction – making of new robots by recombin...
research
06/12/2023

Modular Controllers Facilitate the Co-Optimization of Morphology and Control in Soft Robots

Soft robotics is a rapidly growing area of robotics research that would ...
research
09/12/2022

GenLoco: Generalized Locomotion Controllers for Quadrupedal Robots

Recent years have seen a surge in commercially-available and affordable ...
research
03/04/2022

Bayesian Optimization Meets Hybrid Zero Dynamics: Safe Parameter Learning for Bipedal Locomotion Control

In this paper, we propose a multi-domain control parameter learning fram...
research
09/14/2018

Combining Simulations and Real-robot Experiments for Bayesian Optimization of Bipedal Gait Stabilization

Walking controllers often require parametrization which must be tuned ac...
research
01/25/2021

Scaffolded Gait Learning of a Quadruped Robot with Bayesian Optimization

During learning trials, systems are exposed to different failure conditi...
research
09/20/2023

Open-endedness induced through a predator-prey scenario using modular robots

This work investigates how a predator-prey scenario can induce the emerg...

Please sign up or login with your details

Forgot password? Click here to reset