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Greener RAN Operation Through Machine Learning

机译:通过机器学习实现更环保的RAN操作

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The use of base station (BS) sleep modes is one of the most studied approaches for the reduction of the energy consumption of radio access networks (RANs). Many papers have shown that the potential energy saving of sleep modes is huge, provided the future behavior of the RAN traffic load is known. This paper investigates the effectiveness of sleep modes combined with machine learning (ML) approaches for traffic forecast. A portion of an RAN is considered, comprising one macro BS and a few small cell BSs. Each BS is powered by a photovoltaic (PV) panel, equipped with energy storage units, and a connection to the power grid. The PV panel and battery provide green energy, while the power grid provides brown energy. This paper examines the impacts of different prediction models on the consumed energy mix and on QoS. Numerical results show that the considered ML algorithms succeed in achieving effective trade-offs between energy consumption and QoS. Results also show that energy savings strongly depend on traffic patterns that are typical of the considered area. This implies that a widespread implementation of these energy saving strategies without the support of ML would require a careful tuning that cannot be performed autonomously and that needs continuous updates to follow traffic pattern variations. On the contrary, ML approaches provide a versatile framework for the implementation of the desired trade-off that naturally adapts the network operation to the traffic characteristics typical of each area and to its evolution.
机译:基站(BS)睡眠模式的使用是减少无线电接入网络(RAN)能耗的研究最多的方法之一。许多论文表明,只要知道RAN流量负载的未来行为,休眠模式的潜在节能潜力就很大。本文研究了结合机器学习(ML)方法进行睡眠预测的睡眠模式的有效性。考虑RAN的一部分,其包括一个宏BS和几个小小区BS。每个BS由光伏(PV)面板供电,该面板配有能量存储单元以及与电网的连接。光伏面板和电池提供绿色能源,而电网则提供棕色能源。本文研究了不同预测模型对能耗组合和QoS的影响。数值结果表明,所考虑的机器学习算法成功实现了能耗和QoS之间的有效折衷。结果还表明,节能很大程度上取决于所考虑区域的典型交通方式。这意味着,在没有ML支持的情况下,这些节能策略的广泛实施将需要进行仔细的调整,而这种调整无法自动执行,并且需要不断更新以适应交通模式的变化。相反,ML方法为实现所需的权衡提供了通用的框架,该框架自然使网络操作适应每个区域的典型流量特性及其发展。

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