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IMMUNE GENETIC ALGORITHM PERFORMANCE IN OPTIMIZATION OF POWER FLOW IN POWER SYSTEMS

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Abstract (2. Language): 
In this paper two conventional random search methods that are Genetic Algorithm and Immune Genetic Algorithm has been compared in optimal power flow problem in power system. The IEEE 14-bus test system has been selected as case study. This comparison has been done in equal conditions for two algorithms. Objective function in this problem is the minimization of cost of network losses and the cost of reactive power injection in the period of five years. Control variables are voltage magnitude of generator buses, active power of generators and reactive power injection of load buses. The results show that the IGA is more accurate than the GA and global optimal solutions can be found by the IGA.
1229-1234

REFERENCES

References: 

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Hadi Hosseinian: He received the B.Sc. degree in
electrical engineering from university of Tabriz, Iran in
2005 and the M.Sc. degree from university of Zanjan,
Iran in 2008. His research interests include power
system protections, power quality and application of
artificial intelligent in power systems.
Amin Lafzi: He received the B.Sc. and M.Sc. degree
in electrical engineering from university of Tabriz, Iran
in 2005 and 2008 respectively. His research interests
include power system operating and control.
Sadjad Galvani: He received the B.Sc. degree in
electrical engineering from university of Tabriz, Iran in
2005 and the M.Sc. degree from university of Zanjan,
Iran in 2008. His research interests include power
system operating, reliability and application of artificial
intelligent in power systems.

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