Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can be improved with the assistance of machine-learning techniques. In this work, a complex instance of industrial assembly line control is formalized and a parallel deep reinforcement learning approach is presented. We consider an assembly line control problem in which a set of tasks (e.g., vehicle assembly tasks) needs to be planned and controlled during their execution, with the aim of optimizing given key performance criteria. Specifically, the aim will be that of planning the task in order to minimize the total time taken to execute all the tasks (also called cycle time). Tasks run on workstations in the assembly line. To run, tasks need sp...
In recent times, rapid progress can be seen in the field of artificial intelligence. These technique...
Reconfigurable Manufacturing Systems (RMS) bring new possibilities toward meeting demand fluctuation...
This research aims to propose a framework for the integration of dynamic programming and machine lea...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...
In this research, we investigated the application of deep reinforcement learning (DRL) to a common m...
Discovering the optimal maintenance planning strategy can have a substantial impact on production ef...
Parallel machine scheduling with sequence-dependent family setups has attracted much attention from ...
Industrie 4.0 introduces decentralized, self-organizing and self-learning systems for production con...
Reconfigurable manufacturing systems (RMS) is one of the trending paradigms toward a digitalised fac...
Increasingly fast development cycles and individualized products pose major challenges for today's s...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
The Assembly-to-order production strategy is widely used to fulfill the growing demand for customiza...
In the field of industrial manufacturing, assembly line production is the most common production pro...
Presentation of an application of Neural Network trained with Reinforcement Learning method aimed to...
With the rapid development of Industrial 4.0, the modern manufacturing system has been experiencing ...
In recent times, rapid progress can be seen in the field of artificial intelligence. These technique...
Reconfigurable Manufacturing Systems (RMS) bring new possibilities toward meeting demand fluctuation...
This research aims to propose a framework for the integration of dynamic programming and machine lea...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...
In this research, we investigated the application of deep reinforcement learning (DRL) to a common m...
Discovering the optimal maintenance planning strategy can have a substantial impact on production ef...
Parallel machine scheduling with sequence-dependent family setups has attracted much attention from ...
Industrie 4.0 introduces decentralized, self-organizing and self-learning systems for production con...
Reconfigurable manufacturing systems (RMS) is one of the trending paradigms toward a digitalised fac...
Increasingly fast development cycles and individualized products pose major challenges for today's s...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
The Assembly-to-order production strategy is widely used to fulfill the growing demand for customiza...
In the field of industrial manufacturing, assembly line production is the most common production pro...
Presentation of an application of Neural Network trained with Reinforcement Learning method aimed to...
With the rapid development of Industrial 4.0, the modern manufacturing system has been experiencing ...
In recent times, rapid progress can be seen in the field of artificial intelligence. These technique...
Reconfigurable Manufacturing Systems (RMS) bring new possibilities toward meeting demand fluctuation...
This research aims to propose a framework for the integration of dynamic programming and machine lea...