Abstract:
Power plants have particular control systems to ensure stable operation. The
satisfactory operation of a power system requires a frequency control that keeps it
within acceptable limits when the system is subjected to significant load variation.
With the concept of that the recent developments in the power sector, conventional
controllers are designed considering linear power system models; therefore the
performance of these controllers may not suffice if a controlled system is of high
order and nonlinear for the requirements of power and frequency control. New
strategies and controllers for controlling and monitoring hydro power generation are
developed to upgrade the conventional controllers. To address these complex
problems systematically, several methods have been developed in recent years that
are collectively known as “intelligent control” methodologies.
The main goal of this thesis is on analyzing and comparing an intelligent control
system for frequency and power control of the Gilgel Gibe 2 HEPP in the networked
and isolated mode of operation that has been investigated during operational set
point changes. A particle swarm optimization which is robust in solving continuous
non-linear optimization problems and fuzzy logic controller for compare and contrast
the conventional proportional integral derivative governor control in which active
power can be designed with Frequency and Power control of GG2 HEPP. The
simulation has been performed for different operating conditions using a dynamic
model of the power plant on MATLAB Simulink software to analyze and select the
best controller response comparatively.
The simulation result shows that the overall system output performance is improved
97.5% of its settling time using the proposed particle swarm optimization by tuning
the existing PID controller comparatively from fuzzy logic and the existing PID
controller. When one percent in frequency is increased, the load is drooped from the
system network, and the control response shows that PID Tuned by particle swarm
optimization resulted in less than 1.243% overshoot, fewer settling times at
0.4052sec, and fewer rising times at 0.0034sec as compared to the fuzzy logic
controller and existing PID controller. This controller helps to enhance the power
quality of the power plants.