Base Station Power Optimization for Green Networks Using Reinforcement Learning

Semih Aktaş, Hande Alemdar
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Abstract

The next generation mobile networks have to provide high data rates, extremely low latency, and support high connection density. To meet these requirements, the number of base stations will have to increase and this increase will lead to an energy consumption issue. Therefore “green” approaches to the network operation will gain importance. Reducing the energy consumption of base stations is essential for going green and also it helps service providers to reduce operational expenses. However, achieving energy savings without degrading the quality of service is a huge challenge. In order to address this issue, we propose a machine learning based intelligent solution that also incorporates a network simulator. We develop a reinforcement-based learning model by using deep deterministic policy gradient algorithm. Our model update frequently the policy of network switches in a way that, packet be forwarded to base stations with an optimized power level. The policies taken by the network controller are evaluated with a network simulator to ensure the energy consumption reduction and quality of service balance. The reinforcement learning model allows us to constantly learn and adapt to the changing situations in the dynamic network environment, hence having a more robust and realistic intelligent network management policy set. Our results demonstrate that energy efficiency can be enhanced by 32% and 67% in dense and sparse scenarios, respectively.
基于强化学习的绿色网络基站功率优化
下一代移动网络必须提供高数据速率、极低延迟和支持高连接密度。为了满足这些要求,必须增加基站的数量,而这种增加将导致能源消耗问题。因此,“绿色”的网络运营方式将变得越来越重要。减少基站的能源消耗对于实现绿色环保至关重要,也有助于服务提供商减少运营费用。然而,在不降低服务质量的情况下实现节能是一个巨大的挑战。为了解决这个问题,我们提出了一个基于机器学习的智能解决方案,该解决方案还包含一个网络模拟器。我们利用深度确定性策略梯度算法建立了基于强化的学习模型。我们的模型经常更新网络交换机的策略,使数据包以优化的功率水平转发到基站。通过网络模拟器对网络控制器所采取的策略进行评估,以保证降低能耗和平衡服务质量。强化学习模型使我们能够在动态网络环境中不断学习和适应不断变化的情况,从而拥有更加鲁棒和现实的智能网络管理策略集。我们的研究结果表明,在密集和稀疏的场景下,能源效率可以分别提高32%和67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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