基于繁忙程度的深度强化学习方法,用于弹性光网络的路由、调制和频谱分配

Chengsheng Liang, Yuqi Tu, Yue-Cai Huang
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引用次数: 0

摘要

在弹性光网络的路由、调制和频谱分配(RMSA)中引入了深度强化学习(DRL)。由于 DRL 代理的学习基于其观察到的状态和获得的奖励,因此状态和奖励中应包含关键信息。在以往的研究中,观察到的信息和反馈信息是有限的。本文提出了一种基于繁忙度的 DRL 方法,用于弹性光网络的 RMSA。由于链路或传输路径的繁忙程度对性能有很大影响,我们认为代理应感知繁忙程度信息,以学习良好的 RMSA 策略。具体来说,我们定义了两个指标来量化繁忙程度,然后将这两个指标结合到奖励和状态的设计中。仿真结果表明,我们的方法比不考虑忙闲程度的情况更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Busyness level-based deep reinforcement learning method for routing, modulation, and spectrum assignment of elastic optical networks
Deep reinforcement learning (DRL) has been introduced in routing, modulation and spectrum assignment (RMSA) of the elastic optical networks. Since the DRL agent’s learning is based on the state it observes and the reward it receives, key information should be embedded in the state and the reward. In previous studies, the observed and feedback information is limited. In this paper, we propose a busyness level-based DRL method for the RMSA of the elastic optical networks. Since the busyness of the links or transmission paths highly affects the performance, we believe the busyness information should be perceived by the agent to learn a good RMSA policy. Specifically, we define two indicators to quantify busyness level, and then combine these two indicators into the design of reward and state. Simulation results show that our approach works better than the case that busyness is not
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