Title of article :
MODIFIED ANT COLONY OPTIMIZATION TECHNIQUE FOR SOLVING UNIT COMMITMENT PRO
Author/Authors :
Ameli، Amir نويسنده , , Safari، Amin نويسنده , , Shayanfar، Heidar Ali نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Ant colony optimization (ACO) which is
inspired by the natural behavior of ants in finding the
shortest path to food is appropriate for solving the
combinatorial optimization problems. Therefore, it is
used to solve the unit commitment problem (UCP) and
attain the minimum cost for scheduling thermal units in
order to produce the demand load. In this paper modified
ACO (MACO) is used to solve the UCP in which particle
swarm optimization (PSO) is used to find the ACO
parameters and genetic algorithm (GA) is used to solve
economic dispatch and to minimize the generation cost in
order to select the committed units appropriately. At first,
all possible combinations that satisfy the demanded load
and spinning reserve are calculated by means of genetic
algorithm and the minimum economic generation cost of
each state is calculated to make the ants search space
(ASS). Then the artificial ants are allowed to search in
this space. Problem formulation takes into consideration
the minimum up and down time constraints, startup cost,
shutdown cost, spinning reserve, and generation limit
constraints. The feasibility of the proposed method in two
systems is explained and the results are compared with
the other methods. The results reveal that the suggested
algorithm is more encouraging than the other ones.
Journal title :
International Journal on Technical and Physical Problems of Engineering (IJTPE)
Journal title :
International Journal on Technical and Physical Problems of Engineering (IJTPE)