Reinforcement learning (RL) offers promising opportunities to handle the ever-increasing complexity in managing modern production systems. We apply a Q-learning algorithm in combination with a process-based discrete-event simulation in order to train a self-learning, intelligent, and autonomous agent for the decision problem of order dispatching in a complex job shop with strict time constraints. For the first time, we combine RL in production control with strict time constraints. The simulation represents the characteristics of complex job shops typically found in semiconductor manufacturing. A real-world use case from a wafer fab is addressed with a developed and implemented framework. The performance of an RL approach and benchmark heuri...
Despite producing tremendous success stories by identifying cat videos [1] or solving computer as we...
Well-studied scheduling practices are fundamental for the successful support of core business proces...
Modern production systems tend to have smaller batch sizes, a larger product variety and more comple...
Modern production systems face enormous challenges due to rising customer requirements resulting in ...
Reinforcement learning (RL) has received attention in recent years from agent-based researchers beca...
The objective of this paper is to examine the use and applications of reinforcement learning (RL) te...
Industrie 4.0 introduces decentralized, self-organizing and self-learning systems for production con...
An intelligent agent-based scheduling system, consisting of a reinforcement learning agent and a sim...
Semiconductor wafer fabrication facilities (wafer fabs) often prioritize two operational objectives:...
Recently, manufacturing companies have been making efforts to increase resource utilization while en...
Dispatching rules are usually applied dynamically to schedule the job in the dynamic job-shop. Exist...
With the rapid development of Industrial 4.0, the modern manufacturing system has been experiencing ...
With the rapid development of Industry 4.0, modern manufacturing systems have been experiencing prof...
An important goal in Manufacturing Planning and Control systems is to achieve short and predictable ...
A reinforcement learning agent has been developed to determine optimal operating policies in a multi...
Despite producing tremendous success stories by identifying cat videos [1] or solving computer as we...
Well-studied scheduling practices are fundamental for the successful support of core business proces...
Modern production systems tend to have smaller batch sizes, a larger product variety and more comple...
Modern production systems face enormous challenges due to rising customer requirements resulting in ...
Reinforcement learning (RL) has received attention in recent years from agent-based researchers beca...
The objective of this paper is to examine the use and applications of reinforcement learning (RL) te...
Industrie 4.0 introduces decentralized, self-organizing and self-learning systems for production con...
An intelligent agent-based scheduling system, consisting of a reinforcement learning agent and a sim...
Semiconductor wafer fabrication facilities (wafer fabs) often prioritize two operational objectives:...
Recently, manufacturing companies have been making efforts to increase resource utilization while en...
Dispatching rules are usually applied dynamically to schedule the job in the dynamic job-shop. Exist...
With the rapid development of Industrial 4.0, the modern manufacturing system has been experiencing ...
With the rapid development of Industry 4.0, modern manufacturing systems have been experiencing prof...
An important goal in Manufacturing Planning and Control systems is to achieve short and predictable ...
A reinforcement learning agent has been developed to determine optimal operating policies in a multi...
Despite producing tremendous success stories by identifying cat videos [1] or solving computer as we...
Well-studied scheduling practices are fundamental for the successful support of core business proces...
Modern production systems tend to have smaller batch sizes, a larger product variety and more comple...