面向低延迟视觉数据处理的能量感知移动边缘计算

Huy Trinh, D. Chemodanov, Shizeng Yao, Qing Lei, Bo Zhang, Fan Gao, P. Calyam, K. Palaniappan
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引用次数: 29

摘要

物联网(IoT)和云计算技术的融合为灾难事件响应等应用带来了新的机遇。特别是,移动边缘计算(MEC)等新范式正在变得可行,可以处理网络边缘发生的大量数据,以获得有助于实时决策的见解。在本文中,我们研究了MEC的潜力,以解决与有限电源的受限物联网设备上的能源管理相关的应用问题,同时还提供高分辨率下生成的视觉数据的低延迟处理。使用在灾难事件响应场景中很重要的人脸识别应用程序,我们分析了在低到高工作负载下卸载视觉数据处理(即到边缘云或核心云)的计算策略的权衡,以及它们在不同视觉数据消耗需求(即使用厚客户机或瘦客户机的用户)下对能耗的影响。根据我们在现实边缘和核心云测试平台上使用人脸识别应用程序进行的实验获得的经验结果,我们展示了MEC如何为希望在低延迟下节能的用户提供灵活性,反之亦然。
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Energy-Aware Mobile Edge Computing for Low-Latency Visual Data Processing
New opportunities exist for applications such as disaster incident response that can benefit from the convergence of Internet of Things (IoT) and cloud computing technologies. Particularly, new paradigms such as Mobile Edge Computing (MEC) are becoming feasible to handle the data deluge occurring in the network edge to gain insights that assist in real-time decision making. In this paper, we study the potential of MEC to address application issues related to energy management on constrained IoT devices with limited power sources, while also providing low-latency processing of visual data being generated at high resolutions. Using a face recognition application that is important in disaster incident response scenarios, we analyze the tradeoffs in computing policies that offload visual data processing (i.e., to an edge cloud or a core cloud) at low-to-high workloads, and their impact on energy consumption under different visual data consumption requirements (i.e., users with thick clients or thin clients). From our empirical results obtained from experiments with our face recognition application on a realistic edge and core cloud testbed, we show how MEC can provide flexibility to users who desire energy conservation over low-latency or vice versa in the visual data processing.
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