Ant Algorithms for Discrete Optimization
- 1 April 1999
- journal article
- review article
- Published by MIT Press in Artificial Life
- Vol. 5 (2) , 137-172
- https://doi.org/10.1162/106454699568728
Abstract
This article presents an overview of recent work on ant algorithms, that is, algorithms for discrete optimization that took inspiration from the observation of ant colonies' foraging behavior, and introduces the ant colony optimization (ACO) metaheuristic. In the first part of the article the basic biological findings on real ants are reviewed and their artificial counterparts as well as the ACO metaheuristic are defined. In the second part of the article a number of applications of ACO algorithms to combinatorial optimization and routing in communications networks are described. We conclude with a discussion of related work and of some of the most important aspects of the ACO metaheuristic.Keywords
This publication has 36 references indexed in Scilit:
- Improved heuristics and a genetic algorithm for finding short supersequencesOR Spectrum, 1998
- Simple learning algorithm for the traveling salesman problemPhysical Review E, 1997
- Probabilistic Pursuits on the GridThe American Mathematical Monthly, 1997
- Ants can colour graphsJournal of the Operational Research Society, 1997
- Embedding a sequential procedure within an evolutionary algorithm for coloring problems in graphsJournal of Heuristics, 1995
- PARALLEL ARCHITECTURES AND INTRINSICALLY PARALLEL ALGORITHMS: GENETIC ALGORITHMSInternational Journal of Modern Physics C, 1994
- Why the ant trails look so straight and niceThe Mathematical Intelligencer, 1993
- New methods to color the vertices of a graphCommunications of the ACM, 1979
- Scheduling of Vehicles from a Central Depot to a Number of Delivery PointsOperations Research, 1964
- A Method for Solving Traveling-Salesman ProblemsOperations Research, 1958