BÖLÜNEBİLİR VE SIRA BAĞIMLI HAZIRLIK SÜRELİ İŞLER İÇEREN, İLİŞKİSİZ PARALEL MAKİNE ÇİZELGELEME PROBLEMİ İÇİN GENETİK ALGORİTMA - DOKUMA TEZGAHI ÇİZELGELEME

Bu çalışmada, bölünebilir ve sıra bağımlı hazırlık süreli işler içeren, ilişkisiz paralel makine çizelgeleme probleminde, en büyük tamamlanma zamanının en küçüklenmesi hedeflenmiştir. Çalışmada, tekstil endüstrisinde, dokuma tezgâhlarının çizelgelenmesi gerçek problemi dikkate alınmıştır. Her makineye özgü, işi tipine ve makine yapısına bağlı olarak değişen işleme süreleri söz konusudur. Makine ve iş sırası bağımlı hazırlık süreleri de mevcuttur ve tüm işler sıfır anında hazırdır. Tüm işler, zamanında teslimatı sağlayabilmek için, alt işlere bölünebilmektedir. İşlerin bölünmesi durumu, özellikle de paralel makinelerde, literatürde nadiren çalışılmıştır. Problemin NP-zor yapısından dolayı, gerçek hayata dair, büyük boyutlu problemlerin çözümü için sezgisel ve metasezgisel yöntemler kullanılmaktadır. Genetik algoritmalar (GA), yüksek adaptasyon ve kolay gerçekleşme özelliklerinden dolayı en çok tercih edilen yaklaşımlardır. Önerilen genetik algoritmanın kromozom temsili, rassal anahtar sayılara dayanmaktadır. Çizelge, rassal

A GENETIC ALGORITHM FOR THE UNRELATED PARALLEL MACHINE SCHEDULING PROBLEM WITH JOB SPLITTING AND SEQUENCE-DEPENDENT SETUP TIMES - LOOM SCHEDULING

This paper addresses the unrelated parallel machine scheduling problem with sequence-dependent setup times and job splitting to minimize maximum completion time (makespan). We consider a real-life problem of scheduling looms in a textile industry. Each machine has its own processing times according to the characteristics of the machine as well as the job types. There are machine- and sequence-dependent setup times, and all of the jobs are available at time zero. All of the jobs can be divided into sub-jobs in order to deliver the orders on time. Job splitting has rarely been studied in the literature, especially in the case of parallel machines. Because of the problem’s NP-hard structure, heuristics and metaheuristics have been used to solve real-life large-scale problems. Genetic algorithms (GA) are the most preferred approach of this type given their capabilities, such as high adaptability and easy realization. The proposed GA’s chromosome representation is based on random keys. The schedule is constructed using a sequence of random key numbers. The main contribution of this paper is to introduce a novel approach that performs job splitting and scheduling simultaneously; to the best of our knowledge, no work has been published with this approach. An important improvement proposed in this paper is assigning the number of sub-jobs dynamically. In addition, the new approach is tested on a real-life problem, and the computational results validate the effectiveness of the proposed algorithm

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Tekstil ve Konfeksiyon-Cover
  • ISSN: 1300-3356
  • Yayın Aralığı: Yılda 4 Sayı
  • Yayıncı: Ege Üniversitesi Tekstil ve Konfeksiyon Araştırma & Uygulama Merkezi
Sayıdaki Diğer Makaleler

FARKLI DOKUMA TELALAR İLE BİRLEŞTİRİLMİŞ GÖMLEKLİK KUMAŞIN TUTUMUNUN SUBJEKTİF VE OBJEKTİF OLARAK DEĞERLENDİRİLMESİ

Esra Zeynep YILDIZ, Nilgün ÖZDİL

POLYESTER/POLİANİLİN,PAMUK/POLİANİLİN KOMPOZİT KUMAŞLARININ ÜRETİLMESİ VE ELEKTRİKSEL ÖZELLİKLERİNİN İNCELENMESİ

Ayşe Selcen ALTINOK, İbrahim ÜÇGÜL, Ayşegül UYGUN ÖKSÜZ

Designing of conductive yarn knitted thermal comfortable shirt using battery operated heating system

Gilbert De MEY, Mert ÖZÇELİK, Anne SCHWARZ, KAZANI Ilda, Carla HERTLEER, Lieva LANGENHOVE VAN, Nevin Çiğdem GÜRSOY

İSTATİSTİKSEL KALİTE KONTROL SÜRECİNDE p VE p-CUSUM GRAFİKLERİNİN TEKSTİL SEKTÖRÜNDE UYGULANMASI

İrfan ERTUĞRUL, Abdullah ÖZÇİL

A genetic algorithm for the unrelated parallel machine scheduling problem with job splitting and sequence-dependent setup times - loom scheduling

Duygu EROĞLU YILMAZ, H. Cenk ÖZMUTLU, Seyit Ali KÖKSAL

BÖLÜNEBİLİR VE SIRA BAĞIMLI HAZIRLIK SÜRELİ İŞLER İÇEREN, İLİŞKİSİZ PARALEL MAKİNE ÇİZELGELEME PROBLEMİ İÇİN GENETİK ALGORİTMA - DOKUMA TEZGAHI ÇİZELGELEME

Duygu YILMAZ EROĞLU, H. Cenk ÖZMUTLU, Seyit Ali KÖKSAL

Mathematical analysis of warp elongation in weaving machines with positive backrest system

Özge ÇELİK, Recep EREN

İLETKEN LİF İLE ÖRÜLMÜŞ PORTATİF BATARYA İLE ÇALIŞABİLEN ISIL KONFORLU GİYSİ TASARIMI

Gilbert De MEY, Mert ÖZÇELİK, Anne SCHWARZ, İlda KAZANI, Carla HERTLEER, Lieva Van LANGENHOVE, Nevin Çiğdem GÜRSOY

Production of polyester/polyaniline, cotton/polyaniline composite fabrics and examining electrical characteristics

Ayşe Selcen ALTINOK, Ayşegül ÖKSÜZ UYGUN, İbrahim ÜÇGÜL

Subjective and objective evaluation of the handle properties of shirt fabric fused with different woven interlinings

Esra Zeynep YILDIZ, Nilgün ÖZDİL