Reinforcement learning (RL) has received attention in recent years from agent-based researchers because it can be applied to problems where autonomous agents learn to select proper actions for achieving their goals based on interactions with their environment. Each time an agent performs an action, the environment¡Šs response, as indicated by its new state, is used by the agent to reward or penalize its action. The agent¡Šs goal is to maximize the total amount of reward it receives over the long run. Although there have been several successful examples demonstrating the usefulness of RL, its application to manufacturing systems has not been fully explored. The objective of this research is to develop a set of guidelines for applying the Q-l...
Modern production systems face enormous challenges due to rising customer requirements resulting in ...
We investigate the feasibility of deploying Deep-Q based deep reinforcement learning agents to job-s...
The main objective of this master thesis project is to use the deep reinforcement learning (DRL) and...
Scheduling plays an important role in automated production. Its impact can be found in various field...
An intelligent agent-based scheduling system, consisting of a reinforcement learning agent and a sim...
In recent times, rapid progress can be seen in the field of artificial intelligence. These technique...
Reinforcement learning (RL) offers promising opportunities to handle the ever-increasing complexity ...
Dispatching rules are usually applied dynamically to schedule the job in the dynamic job-shop. Exist...
Since the early days of Artificial Intelligence (AI), researchers have tried to design intelligent m...
The primary goal for this research is to obtain the optimal or near-optimal joint production and mai...
Reinforcement Learning has established as a framework that allows an autonomous agent for automatica...
The objective of this paper is to examine the use and applications of reinforcement learning (RL) te...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
Decentralized decision-making is an active research topic in artificial intelligence. In a distribut...
The increased availability of computing power have made reinforcement learning a popular field of sc...
Modern production systems face enormous challenges due to rising customer requirements resulting in ...
We investigate the feasibility of deploying Deep-Q based deep reinforcement learning agents to job-s...
The main objective of this master thesis project is to use the deep reinforcement learning (DRL) and...
Scheduling plays an important role in automated production. Its impact can be found in various field...
An intelligent agent-based scheduling system, consisting of a reinforcement learning agent and a sim...
In recent times, rapid progress can be seen in the field of artificial intelligence. These technique...
Reinforcement learning (RL) offers promising opportunities to handle the ever-increasing complexity ...
Dispatching rules are usually applied dynamically to schedule the job in the dynamic job-shop. Exist...
Since the early days of Artificial Intelligence (AI), researchers have tried to design intelligent m...
The primary goal for this research is to obtain the optimal or near-optimal joint production and mai...
Reinforcement Learning has established as a framework that allows an autonomous agent for automatica...
The objective of this paper is to examine the use and applications of reinforcement learning (RL) te...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
Decentralized decision-making is an active research topic in artificial intelligence. In a distribut...
The increased availability of computing power have made reinforcement learning a popular field of sc...
Modern production systems face enormous challenges due to rising customer requirements resulting in ...
We investigate the feasibility of deploying Deep-Q based deep reinforcement learning agents to job-s...
The main objective of this master thesis project is to use the deep reinforcement learning (DRL) and...