In this work, a novel approach for generating rescheduling knowledge which can be used in real-time for handling unforeseen events without extra deliberation is presented. For generating such control knowledge, the rescheduling task is modelled and solved as a closed-loop control problem by resorting to the integration of a schedule state simulator with a rescheduling agent that can learn successful schedule repairing policies directly from a variety of simulated transitions between schedule states, using as input readily available schedule color-rich Gantt chart images, and negligible prior knowledge. The generated knowledge is stored in a deep Q-network, which can be used as a computational tool in a closed-loop rescheduling control way t...
We consider networked control systems consisting of multiple independent controlled subsystems, oper...
Generating and representing knowledge about heuristics for repair-based scheduling is a key issue in...
Adopting reinforcement learning in the network scheduling area is getting more attention than ever b...
In this work, a novel approach for generating rescheduling knowledge which can be used in real-time ...
With the advent of the socio-technical manufacturing paradigm, the way in which reschedulingdecision...
Most scheduling methodologies developed until now have laid down good theoretical foundations, but ...
With the current trend towards cognitive manufacturing systems to deal with unforeseen events and di...
Most scheduling methodologies developed until now have laid down good theoretical foundations, but t...
In order to reach higher degrees of flexibility, adaptability and autonomy in manufacturing systems,...
Generating and representing knowledge about heuristics for repair-based scheduling is a key issue in...
Mathematical optimization methods have been developed to a vast variety of complex problems in the f...
Unplanned and abnormal events may have a significant impact on the feasibility of plans and schedule...
International audienceThe flexible job shop problem (FJSP) has been studied in recent decades due to...
The ability to handle unpredictable dynamic events is becoming more important in pursuing agile and ...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
We consider networked control systems consisting of multiple independent controlled subsystems, oper...
Generating and representing knowledge about heuristics for repair-based scheduling is a key issue in...
Adopting reinforcement learning in the network scheduling area is getting more attention than ever b...
In this work, a novel approach for generating rescheduling knowledge which can be used in real-time ...
With the advent of the socio-technical manufacturing paradigm, the way in which reschedulingdecision...
Most scheduling methodologies developed until now have laid down good theoretical foundations, but ...
With the current trend towards cognitive manufacturing systems to deal with unforeseen events and di...
Most scheduling methodologies developed until now have laid down good theoretical foundations, but t...
In order to reach higher degrees of flexibility, adaptability and autonomy in manufacturing systems,...
Generating and representing knowledge about heuristics for repair-based scheduling is a key issue in...
Mathematical optimization methods have been developed to a vast variety of complex problems in the f...
Unplanned and abnormal events may have a significant impact on the feasibility of plans and schedule...
International audienceThe flexible job shop problem (FJSP) has been studied in recent decades due to...
The ability to handle unpredictable dynamic events is becoming more important in pursuing agile and ...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
We consider networked control systems consisting of multiple independent controlled subsystems, oper...
Generating and representing knowledge about heuristics for repair-based scheduling is a key issue in...
Adopting reinforcement learning in the network scheduling area is getting more attention than ever b...