It is difficult to coordinate the various processes in the process industry. We built a multiagent distributed hierarchical intelligent control model for manufacturing systems integrating multiple production units based on multiagent system technology. The model organically combines multiple intelligent agent modules and physical entities to form an intelligent control system with certain functions. The model consists of system management agent, workshop control agent, and equipment agent. For the task assignment problem with this model, we combine reinforcement learning to improve the genetic algorithm for multiagent task scheduling and use the standard task scheduling dataset in OR-Library for simulation experiment analysis. Experimental ...
Reinforcement Learning has established as a framework that allows an autonomous agent for automatica...
The paper proposes using genetic algorithms-based learning classifier system (CS) to solve multiproc...
Computerized scheduling methods and computerized scheduling systems according to exemplary embodimen...
The paper presents an adaptive iterative distributed scheduling algorithm that operates dynamically ...
In recent times, rapid progress can be seen in the field of artificial intelligence. These technique...
Multiagent-based scheduling is a new intelligent scheduling method based on the theories of multiage...
The paper presents an adaptive iterative distributed scheduling algorithm that operates in a market-...
An intelligent agent-based scheduling system, consisting of a reinforcement learning agent and a sim...
Decentralized decision-making is an active research topic in artificial intelligence. In a distribut...
Process planning and scheduling are two crucial functions in manufacturing systems which are usually...
Static and dynamic scheduling methods have attracted a lot of attention in recent years. Among these...
This paper addresses a multi-AGV flow-shop scheduling problem with a reinforcement learning method. ...
Intelligent optimisation refers to the promising technique of integrating learning mechanisms into (...
Multi-machine scheduling, that is, the assigment of jobs to machines such that certain performance d...
Increasing demand for customized products in the wake of the 4th Industrial Revolution is placing ev...
Reinforcement Learning has established as a framework that allows an autonomous agent for automatica...
The paper proposes using genetic algorithms-based learning classifier system (CS) to solve multiproc...
Computerized scheduling methods and computerized scheduling systems according to exemplary embodimen...
The paper presents an adaptive iterative distributed scheduling algorithm that operates dynamically ...
In recent times, rapid progress can be seen in the field of artificial intelligence. These technique...
Multiagent-based scheduling is a new intelligent scheduling method based on the theories of multiage...
The paper presents an adaptive iterative distributed scheduling algorithm that operates in a market-...
An intelligent agent-based scheduling system, consisting of a reinforcement learning agent and a sim...
Decentralized decision-making is an active research topic in artificial intelligence. In a distribut...
Process planning and scheduling are two crucial functions in manufacturing systems which are usually...
Static and dynamic scheduling methods have attracted a lot of attention in recent years. Among these...
This paper addresses a multi-AGV flow-shop scheduling problem with a reinforcement learning method. ...
Intelligent optimisation refers to the promising technique of integrating learning mechanisms into (...
Multi-machine scheduling, that is, the assigment of jobs to machines such that certain performance d...
Increasing demand for customized products in the wake of the 4th Industrial Revolution is placing ev...
Reinforcement Learning has established as a framework that allows an autonomous agent for automatica...
The paper proposes using genetic algorithms-based learning classifier system (CS) to solve multiproc...
Computerized scheduling methods and computerized scheduling systems according to exemplary embodimen...