Artículo
Closed-loop rescheduling using deep reinforcement learning
Fecha de publicación:
07/2019
Editorial:
Elsevier B.V.
Revista:
IFAC-PapersOnLine
e-ISSN:
2405-8963
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Modern socio-technical manufacturing systems are characterized by high levels of variability which gives rise to poor predictability of environmental conditions at the shop-floor. Therefore, a closed-loop rescheduling strategy for handling unforeseen events and unplanned disturbances has become a key element for any real-time disruption management strategy in order to guarantee highly efficient production in uncertain and dynamic conditions. In this work, a real-time rescheduling task is modeled as a closed-loop control problem in which an artificial intelligent agent implements control knowledge generated offline using a schedule simulator to learn schedule repair policies directly from high-dimensional sensory inputs. The rescheduling control knowledge is stored in a deep Q-network, which is used closed-loop to select repair actions to achieve a small set of repaired goal states. The network is trained using the deep Q-learning algorithm with experience replay over a variety of simulated transitions between schedule states based on color-rich Gantt chart images and negligible prior knowledge as inputs. An industrial example is discussed to highlight that the proposed approach enables end-to-end learning of comprehensive rescheduling policies and encoding plant-specific knowledge that can be understood by human experts.
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Articulos(CCT - CORDOBA)
Articulos de CTRO.CIENTIFICO TECNOL.CONICET - CORDOBA
Articulos de CTRO.CIENTIFICO TECNOL.CONICET - CORDOBA
Citación
Palombarini, Jorge Andrés; Martínez, Ernesto Carlos; Closed-loop rescheduling using deep reinforcement learning; Elsevier B.V.; IFAC-PapersOnLine; 52; 1; 7-2019; 231-236
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