Title
Adaptive Online Fault Diagnosis in Autonomous Robot Swarms.
Abstract
Previous work has shown that robot swarms are not always tolerant to the failure of individual robots, particularly those that have only partially failed and continue to contribute to collective behaviors. A case has been made for an active approach to fault tolerance in swarm robotic systems, whereby the swarm can identify and resolve faults that occur during operation. Existing approaches to active fault tolerance in swarms have so far omitted fault diagnosis, however we propose that diagnosis is a feature of active fault tolerance that is necessary if swarms are to obtain long-term autonomy. This paper presents a novel method for fault diagnosis that attempts to imitate some of the observed functions of natural immune system. The results of our simulated experiments show that our system is flexible, scalable, and improves swarm tolerance to various electro-mechanical faults in the cases examined.
Year
DOI
Venue
2018
10.3389/frobt.2018.00131
FRONTIERS IN ROBOTICS AND AI
Keywords
Field
DocType
swarm robotics,fault diagnosis,adaptive,autonomous,unsupervised learning
Swarm behaviour,Computer science,Active fault,Unsupervised learning,Fault tolerance,Artificial intelligence,Autonomous robot,Robot,Machine learning,Swarm robotics,Scalability
Journal
Volume
ISSN
Citations 
5.0
2296-9144
1
PageRank 
References 
Authors
0.37
10
4
Name
Order
Citations
PageRank
James O'Keeffe111.04
Danesh Tarapore216910.76
Alan G. Millard3245.94
Jonathan Timmis433933.03