TY - JOUR TT - Dinamik üretim sistemleri için kanban sayısının belirlenmesi: Bütünleşik bir yöntem AU - Araz, Özlem Uzun AU - Araz, Ceyhun AU - Eski, Özgür PY - 2016 DA - August JF - Pamukkale Üniversitesi Mühendislik Bilimleri Dergisi PB - Pamukkale Üniversitesi WT - DergiPark SN - 2147-5881 SP - 285 EP - 296 VL - 22 IS - 4 KW - Kanban üretim sistemleri KW - Benzetim KW - Yapay sinir ağları KW - Bulanık çıkarsama sistemleri N2 - Tam zamanında üretim sistemleri (TZÜ), işletmelerin doğru zamanda, müşterinin istediği miktarda üretim yapmalarına olanak sağlayan, böylelikle stoklarını azaltmaya teşvik eden bir yönetim felsefesidir. TZÜ felsefesinin en önemli parçası, malzeme hareketlerini gerçekleştirmek için kullanılan kanban sistemleridir. Kanban sistemlerinde, iş istasyonlarında kullanılacak kanban sayılarının belirlenmesi en temel problem olarak karşımıza çıkmaktadır. Kullanılacak kanban sayıları üretim sisteminin performansı üzerinde etkilidir. Bu çalışmanın temel amacı, Kanban sistemlerinde, kart sayılarının dinamik belirlenebilmesi için kullanılabilecek bir yöntem geliştirmektir. Önerilen yöntemin temelinde, üretim sisteminin anlık veri alınarak izlenmesi ve sistem durum değişkenlerinde meydana gelen farklılıkların dikkate alınarak Kanban sayılarının yeniden düzenlemesi yatmaktadır. Bu amaçla yapılan çalışmada benzetim, yapay sinir ağları ve Mamdani tipi bulanık çıkarsama sistemleri entegre edilerek bütünleşik bir dinamik kanban sayıları belirleme yöntemi geliştirilmiştir. Önerilen yöntem, benzetim ortamımda modellenen hipotetik bir üretim sistemine uygulanmıştır. Elde edilen sonuçlar, önerilen yöntemin verimliliğini ve etkinliğini göstermiştir. CR - Graves RJ, Konopka JM, Milne RJ. “Literature review of material flow control mechanisms”. Production Planning & Control, 6(5), 395-403, 1995. 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