Miihendislik Tasarim Optimizasyonunda Genetik Algoritmalar

Bu makale miihendislik tasartmtnda uygun bir optimum tasarimmethodu olarak genetik algoritmalartn kisa bir tantttmtnt veuygulamastni verir. Bu' caltsmantn asil amaci, genetik algoritmalartnbir optimizasyon teknigi olarak potansiyelini ve uygulanabilmekabiliyetlerini bilyalt rulmanlara uyarlamakla gostermektir. Bilyalirulmanlar icin elde edilen sonuclarla bu tekniklerin kabiliyetigosterilmistir. Genetik algoritmalar tabii seleksiyon (secim) tekniginikullanarak tantmlanan stntrlar icinde tarama yapan ve genetikjikrinedayalt uygun arasurma teknikleridirler. Gun gectikce genetikalgoritmalar daha iyi taninmakta ve bir 90k alandauygulanmaktadtrlar.

GENETIC ALGORITHMS IN ENGINEERING DESIGN OPTIMIZATION

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