Optimization of Dynamic Economic Load Dispatch Using Bat Algorithm
Loading...
Files
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Dynamic Economic Load Dispatch (DED) is a real time power system problem, which is an
extension of conventional economic load dispatch. DED is considered to minimize the fuel
cost of the generating station considering equality and non-equality constraints. In this
dissertation work, to optimize the DED problem, BAT algorithm (BA) has been implemented.
Bat algorithm, inspired by nature, imitates the echolocation property of micro-bats found in
nature. Loudness and rate of pulse are variable factors through which global best solution is
being reached. Parameter control, frequency tuning and automatic zooming are some of the
advantages provided by bat algorithm. In this work for further improvement in the exploration
and exploitation capabilities of BA, the characteristics like inertia weight and impact factors
has been introduced in the BA. The inertia weight factor is implied for improving the
convergence speed and impact factor is implied for protecting the best solution from being
struck around the local minimum. Two test system has been considered for checking the
effectiveness of these modifications over the standard algorithm. Test system-Ⅰ consists of the
five thermal generating units and test system-Ⅱ consists of the ten thermal generating units
taking into consideration their generation level constraint and valve-point loading effect for
duration of 24 hours. Performance of modified bat algorithm is compared with standard bat
algorithm and other state of art algorithms i.e. harmony search algorithm, evolutionary
algorithm and sequential quadratic programming. Convergence characteristics of modified and
standard bat algorithm is presented to consolidate the robustness of the algorithm.
Description
Master of Engineering -Power Systems
