An Open-source Sim2Real Approach for Sensor-independent Robot Navigation in a Grid
This paper presents a Sim2Real (Simulation to Reality) approach to bridge the gap between a trained agent in a simulated environment and its real-world implementation in navigating a robot in a similar setting. Specifically, we focus on navigating a quadruped robot in a real-world grid-like environm...
Saved in:
Main Authors | , , |
---|---|
Format | Journal Article |
Language | English |
Published |
05.11.2024
|
Subjects | |
Online Access | Get full text |
Cover
Loading…
Summary: | This paper presents a Sim2Real (Simulation to Reality) approach to bridge the
gap between a trained agent in a simulated environment and its real-world
implementation in navigating a robot in a similar setting. Specifically, we
focus on navigating a quadruped robot in a real-world grid-like environment
inspired by the Gymnasium Frozen Lake -- a highly user-friendly and free
Application Programming Interface (API) to develop and test Reinforcement
Learning (RL) algorithms. We detail the development of a pipeline to transfer
motion policies learned in the Frozen Lake simulation to a physical quadruped
robot, thus enabling autonomous navigation and obstacle avoidance in a grid
without relying on expensive localization and mapping sensors. The work
involves training an RL agent in the Frozen Lake environment and utilizing the
resulting Q-table to control a 12 Degrees-of-Freedom (DOF) quadruped robot. In
addition to detailing the RL implementation, inverse kinematics-based quadruped
gaits, and the transfer policy pipeline, we open-source the project on GitHub
and include a demonstration video of our Sim2Real transfer approach. This work
provides an accessible, straightforward, and low-cost framework for
researchers, students, and hobbyists to explore and implement RL-based robot
navigation in real-world grid environments. |
---|---|
DOI: | 10.48550/arxiv.2411.03494 |