Title :
An Iterative Deepening Genetic Algorithm for Scheduling of Direct Load Control
Author :
Yao, Leehter ; Chang, Wen-Chi ; Yen, Rong-Liang
Author_Institution :
Dept. of Electr. Eng., Nat. Taipei Univ. of Technol., Taiwan
Abstract :
A modified genetic algorithm (GA) called iterative deepening GA (IDGA) is proposed in this paper to optimize the scheduling of direct load control (DLC) strategies. The control strategy (or scheduling) arranged by the IDGA not only sheds the load so that the load required to be shed at each sampling interval is individually satisfied, but it also minimizes the shedding load so that the utility company´s revenue loss due to DLC is minimized. The scheduling obtained by the proposed IDGA tends to level off the accumulated shedding time of each load group, avoiding customers´ complaints about fairness of shedding time. IDGA is composed of a master GA and a sequence of slave GAs. As the master GA evaluates a status combination, it iteratively calls upon a slave GA at each of the following time steps, evaluating possible forward status combinations. With an iteratively deepening search scope, IDGA is able to find a satisfactory suboptimal scheduling.
Keywords :
genetic algorithms; load regulation; load shedding; scheduling; customer complaints; direct load control scheduling optimization; iterative deepening genetic algorithm; load shedding minimization; suboptimal scheduling; time shedding; Air conditioning; Dynamic programming; Dynamic scheduling; Genetic algorithms; Load flow control; Load management; Master-slave; Power generation; Radio control; Switches; Air conditioner; direct load control (DLC); genetic algorithm (GA); load management;
Journal_Title :
Power Systems, IEEE Transactions on
DOI :
10.1109/TPWRS.2005.852151