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A Kind of Reinforcement Learning to Improve Genetic Algorithm for Multiagent Task Scheduling

机译:一种提高多读任务调度遗传算法的钢筋学习

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摘要

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 results show that the algorithm is superior.
机译:很难协调过程行业中的各种过程。 我们为基于多算系统技术的多种生产单位集成了多个生产单位的制造系统构建了多层分布式分层智能控制模型。 该模型有机组合多个智能代理模块和物理实体,形成具有某些功能的智能控制系统。 该模型包括系统管理代理,车间控制代理和设备代理。 对于此模型的任务分配问题,我们将加强学习组合以改善多算法任务调度的遗传算法,并使用标准任务调度数据集进行仿真实验分析。 实验结果表明,该算法优越。

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