Bayesian Online Learning for Energy-Aware Resource Orchestration in Virtualized RANs

J. Ayala-Romero, Andres Garcia-Saavedra, X. Costa, G. Iosifidis
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引用次数: 18

Abstract

Radio Access Network Virtualization (vRAN) will spearhead the quest towards supple radio stacks that adapt to heterogeneous infrastructure: from energy-constrained platforms deploying cells-on-wheels (e.g., drones) or battery-powered cells to green edge clouds. We perform an in-depth experimental analysis of the energy consumption of virtualized Base Stations (vBSs) and render two conclusions: (i) characterizing performance and power consumption is intricate as it depends on human behavior such as network load or user mobility; and (ii) there are many control policies and some of them have non-linear and monotonic relations with power and throughput. Driven by our experimental insights, we argue that machine learning holds the key for vBS control. We formulate two problems and two algorithms: (i) BP-vRAN, which uses Bayesian online learning to balance performance and energy consumption, and (ii) SBP-vRAN, which augments our Bayesian optimization approach with safe controls that maximize performance while respecting hard power constraints. We show that our approaches are data-efficient and have provably performance, which is paramount for carrier-grade vRANs. We demonstrate the convergence and flexibility of our approach and assess its performance using an experimental prototype.
虚拟局域网中能量感知资源编排的贝叶斯在线学习
无线接入网络虚拟化(vRAN)将率先探索适应异构基础设施的灵活无线电堆栈:从部署轮上蜂窝(如无人机)或电池供电的能量受限平台到绿色边缘云。我们对虚拟基站(vBSs)的能耗进行了深入的实验分析,并得出了两个结论:(i)表征性能和功耗是复杂的,因为它取决于人类行为,如网络负载或用户移动性;(2)控制策略较多,有些策略与功率和吞吐量呈非线性单调关系。根据我们的实验见解,我们认为机器学习是控制vBS的关键。我们提出了两个问题和两种算法:(i) BP-vRAN,它使用贝叶斯在线学习来平衡性能和能耗;(ii) SBP-vRAN,它通过安全控制来增强我们的贝叶斯优化方法,在尊重硬功率约束的同时最大化性能。我们表明,我们的方法具有数据效率,并且具有可证明的性能,这对于运营商级vRANs至关重要。我们展示了我们的方法的收敛性和灵活性,并使用实验原型评估其性能。
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