Küçük ve Orta Ölçekli Firmalar İçin İşleme Merkezi Seçiminde Kullanabilecek Bir Karar Destek Sistemi

Küreselleşen iş dünyası, rekabetçi ekonomi, bilgisayar ve elektronik teknolojisindeki gelişmeler firmaları eski tezgâhlar yerine yeni işleme merkezleri satın almaya zorlamaktadır. İmalat tesisinde işleme merkezi seçimi zor ve karar alma aşaması çok uzun zaman alabilen bir problemdir. Seçim süreci geniş bir çeşitlilikteki işleme merkezinin ve işlenecek parça özelliklerinin hesaba katılmasını zorunlu kılar. Bu çalışmada, pratik uygulamalar göz önüne alınarak, işleme merkezi seçmek için karar vericiye yardımcı olacak tarzda bir karar destek sistemi geliştirilmiştir. Uygun işleme merkezleri karar vericinin sorulara verdiği cevaplara göre veri tabanından seçilmektedir. 

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