Adaptive manufacturing control with Deep Reinforcement Learning for dynamic WIP management in industry 4.0
Silvestro Vespoli(University of Naples Federico II), Guido Guizzi(University of Naples Federico II), Luigi Nele(University of Naples Federico II), Giulio Mattera(University of Naples Federico II), Maria Grazia Marchesano(University of Naples Federico II)
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