Machine Learning (ML) techniques and algorithms, which are emerging technologies in Industry 4.0, present new possibilities for complex scheduling methods. Since different rules can be applied to different circumstances, it can be difficult for the decision-maker to choose the right rule at any given time. The purpose of the paper is to build an “intelligent” tool that adapts its choices in response to changes in the state of the production line. A Deep Q-Network (DQN), a typical Deep Reinforcement Learning (DRL) method, is proposed for creating a self-optimizing scheduling policy. The system has a set of known dispatching rules for each machine’s queue, from which the best one is dynamically chosen, according to the system state. The novel...
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 ...
Despite producing tremendous success stories by identifying cat videos [1] or solving computer as we...
Jobshop scheduling is a classic instance in the field of production scheduling. Solving and optimizi...
The dynamic permutation flow shop scheduling problem (PFSP) is receiving increasing attention in rec...
The ability to handle unpredictable dynamic events is becoming more important in pursuing agile and ...
The main objective of this master thesis project is to use the deep reinforcement learning (DRL) and...
Dynamic scheduling problems have been receiving increasing attention in recent years due to their pr...
Dynamic scheduling problems have been receiving increasing attention in recent years due to their pr...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
Industrie 4.0 introduces decentralized, self-organizing and self-learning systems for production con...
With the rapid development of Industry 4.0, modern manufacturing systems have been experiencing prof...
This paper proposes a new method for controlling a flow shop in terms of throughput and Work In Proc...
In the field of industrial manufacturing, assembly line production is the most common production pro...
This research aims to propose a framework for the integration of dynamic programming and machine lea...
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 ...
Despite producing tremendous success stories by identifying cat videos [1] or solving computer as we...
Jobshop scheduling is a classic instance in the field of production scheduling. Solving and optimizi...
The dynamic permutation flow shop scheduling problem (PFSP) is receiving increasing attention in rec...
The ability to handle unpredictable dynamic events is becoming more important in pursuing agile and ...
The main objective of this master thesis project is to use the deep reinforcement learning (DRL) and...
Dynamic scheduling problems have been receiving increasing attention in recent years due to their pr...
Dynamic scheduling problems have been receiving increasing attention in recent years due to their pr...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
Industrie 4.0 introduces decentralized, self-organizing and self-learning systems for production con...
With the rapid development of Industry 4.0, modern manufacturing systems have been experiencing prof...
This paper proposes a new method for controlling a flow shop in terms of throughput and Work In Proc...
In the field of industrial manufacturing, assembly line production is the most common production pro...
This research aims to propose a framework for the integration of dynamic programming and machine lea...
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 ...
Despite producing tremendous success stories by identifying cat videos [1] or solving computer as we...