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Online Learning Approach for Predictive Real-Time Energy Trading in Cloud-RANs

机译:在云rans预测实时能源交易的在线学习方法

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摘要

Constantly changing electricity demand has made variability and uncertainty inherent characteristics of both electric generation and cellular communication systems. This paper develops an online learning algorithm as a prescheduling mechanism to manage the variability and uncertainty to maintain cost-aware and reliable operation in cloud radio access networks (Cloud-RANs). The proposed algorithm employs a combinatorial multi-armed bandit model and minimizes the long-term energy cost at remote radio heads. The algorithm preschedules a set of cost-efficient energy packages to be purchased from an ancillary energy market for the future time slots by learning both from cooperative energy trading at previous time slots and by exploring new energy scheduling strategies at the current time slot. The simulation results confirm a significant performance gain of the proposed scheme in controlling the available power budgets and minimizing the overall energy cost compared with recently proposed approaches for real-time energy resources and energy trading in Cloud-RANs.
机译:不断变化的电力需求使发电和蜂窝通信系统的可变性和不确定的固有特性。本文开发了一个在线学习算法作为预定机制,以管理维护云无线电接入网络(云rans)中维持成本感知和可靠操作的可变性和不确定性。该算法采用组合多武装强盗模型,并最大限度地减少远程无线电头的长期能量成本。该算法预计通过在前时隙的合作能源交易以及在当前时间槽的新能源调度策略中学习,从辅助时隙中购买一套经济高效的能量套餐。仿真结果证实了控制可用电力预算的拟议方案的显着性能增加,并将整体能源成本最低,而最近提出的云Rans中的实时能源资源和能源交易方法。

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