Energy-Aware Opportunistic Charging and Energy Distribution for Sustainable Vehicular Edge and Fog Networks

Milena Radenkovic, Vu San Ha Huynh
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引用次数: 3

Abstract

The fast-growing popularity of electric vehicles (EVs) poses complex challenges for the existing power grid infrastructure to meet the high demands at peak charging hours. Discovering and transferring energy amongst EVs in mobile vehicular edges and fogs is expected to be an effective solution for bringing energy closer to where the demand is and improving the scalability and flexibility compared to traditional charging solutions. In this paper, we propose a fully-distributed energy-aware opportunistic charging approach which enables distributed multi-layer adaptive edge cloud platform for sustainable mobile autonomous vehicular edges which host dynamic on-demand virtual edge containers of on-demand services. We introduce a novel Reinforcement Learning (Q-learning) based SmartCharge algorithm formulated as a finite Markov Decision Process. We define multiple edge energy states, transitions and possible actions of edge nodes in dynamic complex network environments which are adaptively resolved by multilayer real-time multidimensional predictive analytics. This allows SmartCharge edge nodes to more accurately capture, predict and adapt to dynamic spatial-temporal energy supply and demand as well as mobility patterns when energy peaks are expected. More specifically, SmartCharge edge nodes are able to autonomously and collaboratively understand when (how soon) and where the geo-temporal peaks are expected to happen, thus enable better local prediction and more accurate global distribution of energy resources. We provide multi-criteria evaluation of SmartCharge against competitive protocols over real-world San Francisco Cab mobility traces and in the presence of real-world users' energy interest traces driven by Foursquare San Francisco dataset. We show that SmartCharge successfully predicts and mitigates congestion in peak charging hours, reduces the waiting time between vehicles sending energy demand requests and being successfully charged as well as significantly reduces the total number of vehicles in need of energy.
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可持续车辆边缘和雾网的能量感知机会充电和能量分配
电动汽车的快速普及对现有电网基础设施提出了复杂的挑战,以满足高峰充电时段的高需求。与传统充电解决方案相比,在移动车辆边缘和雾中发现和传输电动汽车之间的能量有望成为一种有效的解决方案,可以将能源带到更接近需求的地方,并提高可扩展性和灵活性。在本文中,我们提出了一种完全分布式的能量感知机会收费方法,该方法为可持续移动自动驾驶汽车边缘提供分布式多层自适应边缘云平台,该平台承载按需服务的动态按需虚拟边缘容器。我们介绍了一种新的基于强化学习(Q-learning)的SmartCharge算法,该算法被描述为有限马尔可夫决策过程。我们定义了动态复杂网络环境中边缘节点的多个能量状态、转换和可能的动作,并通过多层实时多维预测分析自适应解决。这使得SmartCharge边缘节点能够更准确地捕获、预测和适应动态的时空能量供需以及预期能量峰值时的移动模式。更具体地说,SmartCharge边缘节点能够自主协作地了解预计何时(多快)和何地发生地球时间峰值,从而实现更好的局部预测和更准确的全球能源分布。我们针对现实世界的旧金山出租车移动轨迹,以及由Foursquare旧金山数据集驱动的现实世界用户的能源兴趣轨迹,对SmartCharge提供多标准评估。我们的研究表明,SmartCharge成功地预测和缓解了充电高峰时段的拥堵,减少了车辆发送能源需求请求和成功充电之间的等待时间,并显著减少了需要能源的车辆总数。
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