DocumentCode
3558874
Title
Reconfiguration and Capacitor Placement for Loss Reduction of Distribution Systems by Ant Colony Search Algorithm
Author
Chang, Chung-Fu
Author_Institution
Dept. of Electr. Eng., WuFeng Inst. of Technol., Chiayi
Volume
23
Issue
4
fYear
2008
Firstpage
1747
Lastpage
1755
Abstract
This paper aims to study distribution system operations by the ant colony search algorithm (ACSA). The objective of this study is to present new algorithms for solving the optimal feeder reconfiguration problem, the optimal capacitor placement problem, and the problem of a combination of the two. The ACSA is a relatively new and powerful swarm intelligence method for solving optimization problems. It is a population-based approach that uses exploration of positive feedback as well as ldquogreedyrdquo search. The ACSA was inspired from the natural behavior of ants in locating food sources and bring them back to their colony by the formation of unique trails. Therefore, through a collection of cooperative agents called ldquoants,rdquo the near-optimal solution to the feeder reconfiguration and capacitor placement problems can be effectively achieved. In addition, the ACSA applies the state transition, local pheromone-updating, and global pheromone-updating rules to facilitate the computation. Through simultaneous operation of population agents, process stagnation can be effectively prevented. Optimization capability can be significantly enhanced. The proposed approach is demonstrated using two example systems from the literature. Computational results show that simultaneously taking into account both feeder reconfiguration and capacitor placement is more effective than considering them separately.
Keywords
distribution networks; optimisation; power capacitors; search problems; ant colony search algorithm; distribution systems; global pheromone-up-dating rules; greedy search; local pheromone-updating rules; loss reduction; optimal capacitor placement problem; optimal feeder reconfiguration problem; optimization problems; population agents; population-based approach; process stagnation; state transition rules; swarm intelligence method; Ant colony optimization; Capacitors; Dynamic programming; Feedback; Genetic algorithms; Heuristic algorithms; Particle swarm optimization; Power system modeling; Simulated annealing; Switches; Ant colony search algorithm (ACSA); capacitor placement; feeder reconfiguration;
fLanguage
English
Journal_Title
Power Systems, IEEE Transactions on
Publisher
ieee
ISSN
0885-8950
Type
jour
DOI
10.1109/TPWRS.2008.2002169
Filename
4652577
Link To Document