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BEGIN: Big Data Enabled Energy-Efficient Vehicular Edge Computing

机译:开始:大数据使能节能的车辆边缘计算

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摘要

Vehicular edge computing is essential to support future emerging multimedia-rich and delay-sensitive applications in vehicular networks. However, the massive deployment of edge computing infrastructures induces new problems including energy consumption and carbon pollution. This motivates us to develop BEGIN (Big data enabled EnerGy-efficient vehIcular edge computiNg), a programmable, scalable, and flexible framework for integrating big data analytics with vehicular edge computing. In this article, we first present a comprehensive literature review. Then the overall design principle of BEGIN is described with an emphasis on computing domain and data domain convergence. In the next section, we classify big data in BEGIN into four categories and then describe their features and potential values. Four typical application scenarios in BEGIN including node deployment, resource adaptation and workload allocation, energy management, and proactive caching and pushing, are provided to illustrate how to achieve energy-efficient vehicular edge computing by using big data. A case study is presented to demonstrate the feasibility of BEGIN and the superiority of big data in energy efficiency improvement. Finally, we conclude this work and outline future research open issues.
机译:车辆边缘计算对于支持未来在车辆网络中新兴的多媒体丰富且对延迟敏感的应用至关重要。但是,边缘计算基础架构的大规模部署引发了新的问题,包括能耗和碳污染。这促使我们开发BEGIN(启用大数据的节能型汽车边缘计算),这是一种可编程,可扩展且灵活的框架,用于将大数据分析与车辆边缘计算集成在一起。在本文中,我们首先提出一个全面的文献综述。然后描述了BEGIN的总体设计原理,重点是计算域和数据域的融合。在下一节中,我们将BEGIN中的大数据分为四类,然后描述其特征和潜在价值。 BEGIN中的四个典型应用场景包括节点部署,资源适应和工作负载分配,能源管理以及主动缓存和推送,以说明如何通过使用大数据来实现节能的车辆边缘计算。案例研究表明BEGIN的可行性以及大数据在提高能效方面的优势。最后,我们总结了这项工作并概述了未来的研究未解决的问题。

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