Autonomous Mobile Robot TurtleBot3 TestBed

This TestBed is a human-centred Industry 5.0 workstation for manual assembly, combining Extended Reality (XR), collaborative robotics, and neuroergonomic assessment in a single setup. It is designed for low-batch industrial assembly tasks where operators need clear instructions, intuitive human-robot interaction, and support for attention-intensive work. The setup builds on earlier ETF/ICEF work and replaces a fragmented baseline system with a more compact XR-based solution that integrates spatial assembly guidance, gaze/gesture/voice interaction, robot coordination, and mental focus assessment. The concept as a neuroergonomic workcell with EEG-based workload assessment, nonobtrusive HMI, graphical assembly guidance, a collaborative robot assistant, and an intelligent task scheduler, showing improved performance, fewer errors, and reduced mental demand. In the XR4Human-SERVE 5.0 implementation, the target use cases are assembly assistance and training assistance for real industrial products.

Name of Principal Investigator: Nikola Knezevic
Position / institutional role: Assistant Professor
Info Email: knezevic@etf.rs
ORCID persistent identifier (PID): 0000-0002-0262-8956
Name of Host Organization  University of Belgrade – School of Electrical Engineering (ETF) 
Department or Lab   Department of Signals and Systems, ETF Robotics lab 
Name of Building  Palace of Science 
Physical Address   Kralja Milana 11, 11000 Beograd, Serbia 
Website Links  https://robot.etf.bg.ac.rs 
Institutional contact name  Nikola Knezevic
Institutional contact email  knezevic@etf.rs
Non-academic stakeholders
Industrial Partners; Startups; Professional Associations; SMEs; Community
Academic stakeholders
Undergraduate students; PhD students; MSc students; Researchers
Other types of stakeholders
Application case: Short description:
Autonomous driving of TurtleBot3 with Reinforcement Learning Implementation of Q-learning algorithm and Feedback control for the mobile robot (turtlebot3_burger) in ROS.
Autonomous Exploration and Mapping Using Two Mobile Robots Two “Turtlebot 3 Burger” robots were used. Turtlebots were equipped with LIDAR sensors and odometers, which enable simultaneous localization and mapping, for which the RBPF-SLAM algorithm based on a particle filter was used. Each robot forms its own local map that is represented by an occupancy grid. Then, map merging into a common global map is performed, based on known initial positions of the robots.

list of hardware components with their brief descriptions:

TurtleBot3 Burger, Lidar Sensor, Single Board Computer (Raspberyy Pi), OpenCR1.0

list of software components with their brief descriptions:

ROS2 Humble, Ubuntu 22.04. Python 3