Yıl: 2017 Cilt: 25 Sayı: 2 Sayfa Aralığı: 794 - 805 Metin Dili: İngilizce İndeks Tarihi: 29-07-2022

A modi ed genetic algorithm for a special case of the generalized assignmentproblem

Öz:
Many central examinations are performed nationwide in Turkey. These examinations are held simultaneouslythroughout Turkey. Examinees attempt to arrive at the examination centers at the same time and they encounterproblems such as traffic congestion, especially in metropolises. The state of mind that this situation puts them intonegatively affects the achievement and future goals of the test takers. Our solution to minimize the negative effects ofthis issue is to assign the test takers to closest examination centers taking into account the capacities of examinationhalls nearby. This solution is a special case of the generalized assignment problem (GAP). Since the scale of the problemis quite large, we have focused on heuristic methods. In this study, a modi ed genetic algorithm (GA) is used forthe solution of the problem since the classical GA often generates infeasible solutions when it is applied to GAPs. Anew method, named nucleotide exchange, is designed in place of the crossover method. The designed method is runbetween the genes of a single parent chromosome. In addition to the randomness, the consciousness factor is takeninto consideration in the mutation process. With this new GA method, results are obtained successfully and quickly inlarge-sized data sets.
Anahtar Kelime:

Konular: Mühendislik, Elektrik ve Elektronik
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA Dörterler M, Bay O, AKCAYOL M (2017). A modi ed genetic algorithm for a special case of the generalized assignmentproblem. , 794 - 805.
Chicago Dörterler Murat,Bay Omer Faruk,AKCAYOL Mehmet Ali A modi ed genetic algorithm for a special case of the generalized assignmentproblem. (2017): 794 - 805.
MLA Dörterler Murat,Bay Omer Faruk,AKCAYOL Mehmet Ali A modi ed genetic algorithm for a special case of the generalized assignmentproblem. , 2017, ss.794 - 805.
AMA Dörterler M,Bay O,AKCAYOL M A modi ed genetic algorithm for a special case of the generalized assignmentproblem. . 2017; 794 - 805.
Vancouver Dörterler M,Bay O,AKCAYOL M A modi ed genetic algorithm for a special case of the generalized assignmentproblem. . 2017; 794 - 805.
IEEE Dörterler M,Bay O,AKCAYOL M "A modi ed genetic algorithm for a special case of the generalized assignmentproblem." , ss.794 - 805, 2017.
ISNAD Dörterler, Murat vd. "A modi ed genetic algorithm for a special case of the generalized assignmentproblem". (2017), 794-805.
APA Dörterler M, Bay O, AKCAYOL M (2017). A modi ed genetic algorithm for a special case of the generalized assignmentproblem. Turkish Journal of Electrical Engineering and Computer Sciences, 25(2), 794 - 805.
Chicago Dörterler Murat,Bay Omer Faruk,AKCAYOL Mehmet Ali A modi ed genetic algorithm for a special case of the generalized assignmentproblem. Turkish Journal of Electrical Engineering and Computer Sciences 25, no.2 (2017): 794 - 805.
MLA Dörterler Murat,Bay Omer Faruk,AKCAYOL Mehmet Ali A modi ed genetic algorithm for a special case of the generalized assignmentproblem. Turkish Journal of Electrical Engineering and Computer Sciences, vol.25, no.2, 2017, ss.794 - 805.
AMA Dörterler M,Bay O,AKCAYOL M A modi ed genetic algorithm for a special case of the generalized assignmentproblem. Turkish Journal of Electrical Engineering and Computer Sciences. 2017; 25(2): 794 - 805.
Vancouver Dörterler M,Bay O,AKCAYOL M A modi ed genetic algorithm for a special case of the generalized assignmentproblem. Turkish Journal of Electrical Engineering and Computer Sciences. 2017; 25(2): 794 - 805.
IEEE Dörterler M,Bay O,AKCAYOL M "A modi ed genetic algorithm for a special case of the generalized assignmentproblem." Turkish Journal of Electrical Engineering and Computer Sciences, 25, ss.794 - 805, 2017.
ISNAD Dörterler, Murat vd. "A modi ed genetic algorithm for a special case of the generalized assignmentproblem". Turkish Journal of Electrical Engineering and Computer Sciences 25/2 (2017), 794-805.