The dynamic permutation flow shop scheduling problem (PFSP) is receiving increasing attention in recent years. To provide intelligent scheduling for the dynamic PFSP, we solved the dynamic PFSP with new job arrival using deep reinforcement learning (DRL). The mathematical model is established with the objective of minimizing the total tardiness cost of all jobs arriving at the system. The double deep Q network (DDQN) is adapted to solve the studied problem. A large range of instances is provided to train the DDQN-based scheduling agent. The training curve shows the DDQN-based scheduling agent learned to choose appropriate actions at rescheduling points during the training process. After training, the trained model is saved and used to compa...
Scheduling is the mathematical problem of allocating tasks to resources considering certain constrai...
Adopting reinforcement learning in the network scheduling area is getting more attention than ever b...
There is a growing interest in integrating machine learning techniques and optimization to solve cha...
The dynamic permutation flow shop scheduling problem (PFSP) is receiving increasing attention in rec...
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...
Machine Learning (ML) techniques and algorithms, which are emerging technologies in Industry 4.0, pr...
Jobshop scheduling is a classic instance in the field of production scheduling. Solving and optimizi...
The ability to handle unpredictable dynamic events is becoming more important in pursuing agile and ...
In the field of industrial manufacturing, assembly line production is the most common production pro...
To realise the intelligent decision-making of dynamic scheduling and reconfiguration, we studied the...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
Production scheduling is critical for manufacturing system. Dispatching rules are usually applied dy...
With the rapid development of Industry 4.0, modern manufacturing systems have been experiencing prof...
With the rapid development of Industrial 4.0, the modern manufacturing system has been experiencing ...
Scheduling is the mathematical problem of allocating tasks to resources considering certain constrai...
Adopting reinforcement learning in the network scheduling area is getting more attention than ever b...
There is a growing interest in integrating machine learning techniques and optimization to solve cha...
The dynamic permutation flow shop scheduling problem (PFSP) is receiving increasing attention in rec...
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...
Machine Learning (ML) techniques and algorithms, which are emerging technologies in Industry 4.0, pr...
Jobshop scheduling is a classic instance in the field of production scheduling. Solving and optimizi...
The ability to handle unpredictable dynamic events is becoming more important in pursuing agile and ...
In the field of industrial manufacturing, assembly line production is the most common production pro...
To realise the intelligent decision-making of dynamic scheduling and reconfiguration, we studied the...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
Production scheduling is critical for manufacturing system. Dispatching rules are usually applied dy...
With the rapid development of Industry 4.0, modern manufacturing systems have been experiencing prof...
With the rapid development of Industrial 4.0, the modern manufacturing system has been experiencing ...
Scheduling is the mathematical problem of allocating tasks to resources considering certain constrai...
Adopting reinforcement learning in the network scheduling area is getting more attention than ever b...
There is a growing interest in integrating machine learning techniques and optimization to solve cha...