TY - DATA T1 - Videos underlying the publication: A Novel MPC Formulation for Dynamic Target Tracking with Increased Area Coverage for Search-and-Rescue Robots PY - 2024/09/27 AU - Mirko Baglioni UR - https://data.4tu.nl/articles/dataset/_/22270498 DO - 10.4121/22270498.v1 KW - Model predictive control KW - Tube-based model predictive control KW - Robust control KW - Coverage path planning KW - Robots in search and rescue operations KW - Disaster robotics N2 -

This dataset contains the videos of the trajectories of a robot and victims in a simulated search-and-rescue scenario, the videos of experiments performed with robots in real life, and the tables with the uncertainty values used in the simulations.


The videos of the trajectories of a robot and victims in a simulated search-and-rescue scenario consider five different approaches for comparison purposes: our tube-based Model Predictive Control (MPC) approach; a Farrohksiar tube-based MPC approach; an A*-MPC approach; randomized MPC approach; and a Boustrophedon-motion-A* approach. The scenario consisted on a disaster building in which the robot has to explore the environment to detect 3 victims and avoid 5 static obstacles, and finally go to the exit point, while the victims move accordingly to an established crowd evacuation model.


The videos of experiments of our tube-based Model Predictive Control (MPC) approach with robots in real life consist of three scenarios in a lab environment, with a TurtleBot 3 Burger robot behaving as the search-and-rescue robot, an iRobot Create 3 robot behaving as the victim, and 3 static obstacles.


The dataset also contains the values of the uncertainties, i.e., the non-smoothness map values used for x and y coordinates.

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