Multi-agent Reinforcement Learning Approach to Enhance Proactive and Resilience System based IoT

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Abstract

Internet of Things (IoT) systems that use reinforcement learning and multi-agent system are described in this research. Intelligent agents reside on computers that comprise this system. They enable a system to take independent actions, communicate with other systems, and adapt to changing situations. We presented a system that uses intelligent agents embedded in machines to determine which procedures are most critical and how they should be distributed. Robots with intelligent agents can improve their decision-making abilities. The proposed system and transmitting rule function compare the scheduling problem with early completion, efficiency, and delay in checking the system and the dispatching. Multi-agent using resilience systems are competitive even in a continually developing environment. It is possible that reinforcement learning with intelligence agents will be used in the future because it provides users with a unique approach to problem-solving. Additionally, these methodologies have new ways to optimize complex systems in scheduling, project planning, and other business-related domains when used in conjunction with the Internet of Things (IoT) standard technology. The rest of the paper is organized in give section, after providing the introduction, in 2nd section previous work has been discussed, in the third section, the methodology is discussed, in the 4th dataset and result and discussion is explain in the last work is concluded
多智能体强化学习方法增强基于物联网的主动和弹性系统
本研究描述了使用强化学习和多智能体系统的物联网系统。智能代理驻留在组成这个系统的计算机上。它们使系统能够采取独立的行动,与其他系统进行通信,并适应不断变化的情况。我们提出了一个系统,该系统使用嵌入在机器中的智能代理来确定哪些程序是最关键的,以及它们应该如何分配。拥有智能代理的机器人可以提高他们的决策能力。提出的系统和传输规则函数比较了调度问题在检查系统和调度时的提前完成、效率和延迟。使用弹性系统的多智能体即使在不断发展的环境中也具有竞争力。未来有可能使用智能代理的强化学习,因为它为用户提供了一种独特的解决问题的方法。此外,当与物联网(IoT)标准技术结合使用时,这些方法具有优化调度,项目规划和其他业务相关领域的复杂系统的新方法。本文的其余部分组织在给出部分,在提供介绍之后,在第二部分讨论了以前的工作,在第三部分讨论了方法,在第四部分数据集和结果和讨论进行了解释,在最后的工作是总结
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