Payload transportation system of a learning factory
Date
2023
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Tartu Ülikool
Abstract
The transition to Industry 4.0 has highlighted the urgent need for a skilled workforce
proficient in operating and maintaining advanced robotic and automation systems. To address
this critical issue and prepare the next generation of industry professionals, this thesis focuses
on the design and implementation of a payload transportation system for a Learning Factory.
The proposed system combines SLAM, AR Tracking, and ROS Navigation technologies to
enable efficient navigation and obstacle avoidance within the Learning Factory environment.
Additionally, the system facilitates seamless cooperation with a manipulator robot, enabling
collaborative tasks and enhancing the overall efficiency of the system.
The outcome of this work is demonstrated in a book transportation scenario incorporating a
multi-robot system that consists of two manipulator robots, and a mobile base. This work
contributes to bridging the skills gap and equipping the next generation of industry
professionals with practical robotics knowledge.
Description
Keywords
autonomous navigation, learning factory, ROS, mobile robot, multi-robot system, SLAM