A new strategy to improve the search performance of Max-Min Ant Aystem Algorithm when solving the Quadratic Assignment Problems
Abstract
The use of Ant Colony
Optimizations (ACOs) to solve Combinatorial
Optimization (CO) problems has increase rapidly.
Particularly, researchers have started to seek for
improvement in ACOs through various innovative
methodologies. Among others is the use of
innovative pheromone manipulation strategy, the
modification of ACOs framework, and
hybridization of ACOs with other metaheuristic
algorithms. This paper presents a new pheromone
manipulation strategy called the Minimum
Pheromone Threshold Strategy (MPTS), which is
able to enhance the search performance of the
Max-Min Ant System (MMAS) algorithm (a
variant of ACO).
Collections
- Conference Papers [2600]