Title of article :
VOLTAGE SECURITY MARGIN ENHANCEMENT USING GENERATION RESCHEDULING AND LOAD SHEDDING WITH AN ARTIFICIAL NEURAL NETWORK
Author/Authors :
Fatami Nejad، Hossein نويسنده Electrical Engineering Department, Power and Water University of Technology, Tehran, Iran , , Ameli، Mohammad Taghi نويسنده Electrical Engineering Department, Power and Water University of Technology, Tehran, Iran ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
The occurrence of the recent nationwide
blackouts in some major power networks of the world
indicates the weakness of current control and protection
systems. Implementation of appropriate control and
protection plans is necessary, then, to prevent such future
occurrences. In this paper, an algorithm is presented
which can evaluate and improve voltage stability by
using an online artificial neural network (ANN). A
voltage security margin (VSM) index is used to evaluate
voltage stability by dividing the operating points into two
groups: safe and unsafe. Generally, the algorithm consists
of two stages: online and offline. Initially, though, in the
offline stage, the VSM of an operating point which is
labeled as unsafe is turned back to a secure level by
changing the production pattern of generators and, if
necessary, load shedding using the sensitivity analysis
method. The ANN is then trained using different input
variables with the required control actions in order to
improve the voltage conditions of the system. In an
online stage, the ANN can estimate the required
controlling action which would return the system to a
proper voltage within a safe time period. For real-time
applications, network information can be obtained from
Phasor Measurement Units (PMUs).
Journal title :
International Journal on Technical and Physical Problems of Engineering (IJTPE)
Journal title :
International Journal on Technical and Physical Problems of Engineering (IJTPE)