Optimal-Ant Colony Optimization in Swarm Intelligence
Issue: Vol.5 No.1
Authors:
Anita (Manav Rachna International University, Faridabad)
SS Tyagi (Manav Rachna International University, Faridabad)
Abstract:
To describe the approach of real-world activities we have proposed an algorithm and its diagram for the Optimal Ant Colony Optimization Technique. In this paper we are describing the techniques of swarm intelligence. In Ant Colony Optimization Approach we will check through the algorithm whether the appropriate path is selected to reach the destination. To explain the concept of this algorithm we have used a real[1]world example of Ants. To optimize the path in the search space, we have proposed an OACO algorithm.
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