Candidate Set Strategies for ACO (final draft).pdf (157.21 kB)
Download fileCandidate set strategies for ant colony optimisation
conference contribution
posted on 2023-05-23, 09:34 authored by Randall, M, Erin MontgomeryErin MontgomeryAnt Colony Optimisation based solvers systematically scan the set of possible solution elements before choosing a particular one. Hence, the computational time required for each step of the algorithm can be large. One way to overcome this is to limit the number of element choices to a sensible subset, or candidate set. This paper describes some novel generic candidate set strategies and tests these on the travelling salesman and car sequencing problems. The results show that the use of candidate sets helps to find competitive solutions to the test problems in a relatively short amount of time.
History
Publication title
Proceedings of the 3rd International Workshop on Ant Algorithms (ANTS 2002)Volume
2463Editors
M Dorigo, G Di Caro, M SampelsPagination
243-249ISBN
9783540441465Department/School
School of Information and Communication TechnologyPublisher
SpringerPlace of publication
BerlinEvent title
3rd of the International Workshop on Ant Algorithms (ANTS 2002)Event Venue
Brussels, BelgiumDate of Event (Start Date)
2002-09-12Date of Event (End Date)
2002-09-14Rights statement
Copyright 2002 Springer-Verlag Berlin HeidelbergRepository Status
- Open