TEKNOLOJİK GELİŞMELER IŞIĞINDA ENDÜSTRİ MÜHENDİSLİĞİNİN GELECEĞİ
Yıl 2023,
, 1094 - 1111, 22.12.2023
Ezgi Aktar Demirtaş
,
Müjgan Sağır Özdemir
,
Şerafettin Alpay
,
N. Fırat Özkan
,
Servet Hasgül
,
Aydın Sipahioğlu
Öz
Endüstri Mühendisliği insan, makine ve malzemeden oluşan bütünleşik sistemlerin tasarımı, kurulması ve geliştirilmesi ile ilgilenir. Kaynakların verimli kullanımının gittikçe daha önemli olduğu küresel dünyada, tesislerin yer seçimi ve yerleşiminden, hammadde ve diğer girdilerin tedariğine, üretim süreçlerinin planlanması ve çizelgelenmesinden stok ve lojistik süreçlerinin yönetimine, standart süre ve kapasitelerin belirlenmesinden ürün, süreç ve hizmet kalitesinin iyileştirilmesine kadar pek çok aşamada eniyi kararların verilmesinde rol oynamaktadır. Çok çeşitli çalışma alanlarına sahip olan Endüstri Mühendisliği, son yıllarda hızla gelişen Yapay Zekâ teknikleri ve diğer teknolojik gelişmelerden oldukça etkilenmektedir. Bu makalede, son yıllarda Endüstri Mühendisliği alanındaki gelişme ve yenilikler, içerdiği bilim dalları temelinde literatüre dayandırılarak açıklanmaktadır. Çalışmanın bulguları Cumhuriyetimizin 100. yılında yeni mezun olan Endüstri Mühendisleri ve mühendis adayları için de bir farkındalık oluşturacaktır.
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THE FUTURE OF INDUSTRIAL ENGINEERING WITH KNOWLEDGE OF TECHNOLOGICAL ADVANCEMENTS
Yıl 2023,
, 1094 - 1111, 22.12.2023
Ezgi Aktar Demirtaş
,
Müjgan Sağır Özdemir
,
Şerafettin Alpay
,
N. Fırat Özkan
,
Servet Hasgül
,
Aydın Sipahioğlu
Öz
Industrial Engineering is concerned with the design, installation, and improvement of integrated systems comprising human, machine, and materials. In a globalized world where efficient resource utilization is increasingly crucial, Industrial Engineering plays a pivotal role in decision-making at various stages, from site selection and layout of facilities to procurement of raw materials and other inputs, planning and scheduling of production processes, management of inventory and logistics processes, determination of standard times and capacities, and enhancement of product, process, and service quality. With diverse areas of application, Industrial Engineering has rapidly evolved in recent years, significantly influenced by emerging artificial intelligence techniques and other technological advancements. This article explores the developments and innovations in the field of Industrial Engineering in the context of various scientific disciplines, relying on literature-based evidence. The findings of this study aim to create awareness for newly graduated Industrial Engineers and engineering candidates, particularly in the centennial year of Republic of Turkey.
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