DocumentCode :
1126489
Title :
Ant Colony System-Based Algorithm for Constrained Load Flow Problem
Author :
Vlachogiannis, John G. ; Hatziargyriou, Nikos D. ; Lee, Kwang Y.
Author_Institution :
Ind. & Energy Informatics, Ind. & Energy Informatics (IEI) Lab., Lamia, Greece
Volume :
20
Issue :
3
fYear :
2005
Firstpage :
1241
Lastpage :
1249
Abstract :
This paper presents the ant colony system (ACS) method for network-constrained optimization problems. The developed ACS algorithm formulates the constrained load flow (CLF) problem as a combinatorial optimization problem. It is a distributed algorithm composed of a set of cooperating artificial agents, called ants, that cooperate among them to find an optimum solution of the CLF problem. A pheromone matrix that plays the role of global memory provides the cooperation between ants. The study consists of mapping the solution space, expressed by an objective function of the CLF on the space of control variables [ant system (AS)-graph], that ants walk. The ACS algorithm is applied to the IEEE 14-bus system and the IEEE 136-bus system. The results are compared with those given by the probabilistic CLF and the reinforcement learning (RL) methods, demonstrating the superiority and flexibility of the ACS algorithm. Moreover, the ACS algorithm is applied to the reactive power control problem for the IEEE 14-bus system in order to minimize real power losses subject to operating constraints over the whole planning period.
Keywords :
control engineering computing; graph theory; learning (artificial intelligence); load flow; minimisation; power engineering computing; power system planning; probability; reactive power control; IEEE bus systems; ant colony stem-based algorithm; artificial agents; combinatorial optimization problems; constrained load flow problems; network-constrained optimization problems; pheromone matrix; reactive power control; real power loss minimization; reinforcement learning methods; Ant colony optimization; Constraint optimization; Control systems; Distributed algorithms; Learning; Load flow; Optimal control; Power system planning; Reactive power control; Switches; Ant colony system (ACS); combinatorial optimization; constrained load flow (CLF); reinforcement learning (RL);
fLanguage :
English
Journal_Title :
Power Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
0885-8950
Type :
jour
DOI :
10.1109/TPWRS.2005.851969
Filename :
1490574
Link To Document :
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