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Optimal Probabilistic Policy for Dynamic Resource Activation Using Markov Decision Process in Green Wireless Networks

机译:绿色无线网络中基于马尔可夫决策过程的动态资源激活最优概率策略

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With increasing awareness toward protecting our environment, this paper intends to reduce the CO2 emission of a wireless cellular network by reducing the power consumption of its base station. We propose to reduce power consumption by dynamically activating and deactivating the modular resources at the base station depending on the instantaneous network traffic. In order to achieve the objective, we develop a discrete time Markov Decision Process (DTMDP) to capture the dynamics of the system. In the DTMDP, the action to be taken at each decision epoch is to activate a new resource module, to deactivate a currently active resource module, or to stay the same. We further develop a linear programming approach to solve the DTMDP for optimal probabilistic decision policy. Evaluation results show that the optimal probabilistic policy for resource activation can reduce power consumption for more 50 percent under various traffic load conditions, without compromising network service quality which is measured in terms of user blocking probability.
机译:随着人们对保护环境意识的增强,本文旨在通过降低基站的功耗来减少无线蜂窝网络的二氧化碳排放量。我们建议通过根据瞬时网络流量动态激活和停用基站的模块化资源来降低功耗。为了实现这一目标,我们开发了离散时间马尔可夫决策过程(DTMDP)来捕获系统的动态。在DTMDP中,在每个决策时期要采取的措施是激活新资源模块,停用当前活动的资源模块或保持不变。我们进一步开发了线性规划方法来解决DTMDP的最佳概率决策策略。评估结果表明,针对资源激活的最佳概率策略可以在各种流量负载条件下将功耗降低50%以上,而不会损害根据用户阻塞概率衡量的网络服务质量。

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