Abstract/Details

A Robust and Efficient Autonomous Exploration Methodology of Unknown Environments for Multi-Robot Systems 

Goodwin, Lillian.   University of Ontario Institute of Technology (Canada) ProQuest Dissertations & Theses,  2022. 30338587.

Abstract (summary)

Multi-robot systems can provide effective solutions for exploring and inspecting environments where it is unpractical or unsafe for humans, however, adequate coordination of the multi-robot system is a challenging initiative. A robust and efficient methodology for exploration of unknown environments is presented using a k-means method to improve traditional task allocation schemes. The k-means method proposed is an efficient technique due to the algorithm’s quick convergence time and its ability to segment a previously unknown map in a logical manner. In this method, a global executive receives frontiers from local robots, filters them, clusters them using the k-means method, and then reassigns them to the agents. A framework is developed in Robot Operating System (ROS) to test the effectiveness of the k-means method. The method is tested over a series of simulations and real-world tests, where it provided significant reductions in exploration time and distance travelled compared to other methods.

Indexing (details)


Subject
Environmental studies;
Mechanical engineering;
Robotics
Classification
0477: Environmental Studies
0548: Mechanical engineering
0771: Robotics
Identifier / keyword
Multi-robot systems; Frontier exploration; K-means method; Robot Operating System; Optimization
Title
A Robust and Efficient Autonomous Exploration Methodology of Unknown Environments for Multi-Robot Systems 
Author
Goodwin, Lillian
Number of pages
128
Publication year
2022
Degree date
2022
School code
1555
Source
MAI 84/7(E), Masters Abstracts International
ISBN
9798368452494
Advisor
Nokleby, Scott
University/institution
University of Ontario Institute of Technology (Canada)
University location
Canada -- Ontario, CA
Degree
M.S.
Source type
Dissertation or Thesis
Language
English
Document type
Dissertation/Thesis
Dissertation/thesis number
30338587
ProQuest document ID
2779954401
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.
Document URL
https://www.proquest.com/docview/2779954401