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首页> 外文期刊>Telecommunication systems: Modeling, Analysis, Design and Management >State-dependent packet scheduling for QoS routing in a dynamically changing environment
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State-dependent packet scheduling for QoS routing in a dynamically changing environment

机译:动态变化环境中QoS路由的状态相关数据包调度

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摘要

The packet scheduling in router plays an important role in the sense to achieve QoS differentiation and to optimize the queuing delay, in particular when this optimization is accomplished on all routers of a path between source and destination. In a dynamically changing environment a good scheduling discipline should be also adaptive to the new traffic conditions. We model this problem as a multi-agent system in which each agent learns through continual interaction with the environment in order to optimize its own behaviour. So, we adopt the framework of Markov decision processes applied to multi-agent system and present a pheromone-Q learning approach which combines the Q-multi-learning technique with a synthetic pheromone that acts as a communication medium speeding up the learning process of cooperating agents.
机译:在实现QoS区分和优化排队延迟的意义上,路由器中的数据包调度起着重要作用,特别是当此优化在源和目标之间的路径的所有路由器上完成时。在动态变化的环境中,良好的调度规则也应适应新的交通状况。我们将此问题建模为多主体系统,其中每个主体通过与环境的持续交互来学习以优化其自身的行为。因此,我们采用适用于多智能体系统的马尔可夫决策过程框架,提出了一种信息素-Q学习方法,该方法将Q-多学习技术与合成信息素相结合,该信息素作为交流媒介,加快了协作学习过程。代理商。

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