Scheduling Generation Model on Parallel Machines with Due Date and Setup Cost Based on Deep Learning |
Yoo, Woosik
(Department of Industrial and Management Engineering, Incheon National University)
Seo, Juhyeok (Department of Industrial and Management Engineering, Incheon National University) Lee, Donghoon (Department of Industrial and Management Engineering, Incheon National University) Kim, Dahee (Department of Industrial and Management Engineering, Incheon National University) Kim, Kwanho (Department of Industrial and Management Engineering, Incheon National University) |
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