Title of article :
A computational intelligence-based technique for the installation of multi-type FACTS devices
Author/Authors :
Mei Yen, Winnie Chong Department of Electrical and Electronics Engineering - College of Engineering - Universiti Tenaga Nasional, Malaysia , Helmi Mansor, Mohd Department of Electrical and Electronics Engineering - College of Engineering - Universiti Tenaga Nasional, Malaysia , Azwa Shaaya, Sharifah Department of Electrical and Electronics Engineering - College of Engineering - Universiti Tenaga Nasional, Malaysia , Musirin, Ismail School of Electrical Engineering - College of Engineering - Universiti Teknologi MARA - Selangor, Malaysia
Abstract :
As power demand rises, the power system becomes more stressed, potentially leading to an increase
in power losses. When compared to lower power losses, higher power losses result in higher power
system operating cost. Flexible AC Transmission System (FACTS) devices help to reduce power
losses. This paper describes the use of a computational intelligence-based technique, in this case the
Artificial Immune System (AIS), to solve the installation of Thyristor Controlled Static Compensator
(TCSC) and Static VAR Compensator (SVC) in a power system while ensuring optimal sizing of both
devices. The goal of determining the best locations and sizes for the multi-type FACTS devices is to
minimize system power loss. Three case studies are presented to investigate the effectiveness of the
proposed AIS optimization technique in solving the multi-type FACTS device installation problem
under various power system conditions. The optimization results generated by the proposed AIS are
benecial in improving the power system, particularly in terms of system power loss minimization,
which also contributes to power system operating cost minimization. As a result, the likelihood of
this being sustainable and able to be implemented for an extended period is greater.
Keywords :
FACTS devices , Computational intelligence , Loss minimization and multi-type
Journal title :
International Journal of Nonlinear Analysis and Applications