边缘计算:应用、最新技术和挑战

Shufen Wang
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引用次数: 17

摘要

物联网(IoT)现在正在渗透到我们的日常生活中,为我们的每一个决策提供了重要的测量和收集工具。数以百万计的传感器和设备通过复杂的网络不断生成数据并交换重要信息,这些网络支持机器对机器通信,并监控关键的智能世界基础设施。边缘计算作为一种缓解资源拥塞升级的策略,已经成为解决物联网和本地化计算需求的新范式。与众所周知的云计算相比,边缘计算将数据计算或存储迁移到靠近最终用户的网络边缘。因此,分布在网络上的多个计算节点可以减轻集中式数据中心的计算压力,并可以显著减少消息交换中的延迟。此外,分布式架构平衡了网络流量,避免了物联网网络中的流量峰值,减少了边缘/云服务器与最终用户之间的延迟,与传统云服务相比,减少了实时物联网应用的响应时间。在本文中,我们进行了全面的调查,以分析边缘计算如何提高物联网网络的性能。我们根据架构将边缘计算分为不同的组,并通过比较网络延迟、带宽使用、功耗和开销来研究它们的性能。通过对边缘计算概念、典型应用场景、研究现状、关键技术的系统介绍,认为边缘计算的发展仍处于起步阶段。在实际应用中仍有许多问题需要解决,包括优化边缘计算性能、安全性、互操作性、智能边缘运营管理服务等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge Computing: Applications, State-of-the-Art and Challenges
The Internet of Things (IoT) is now infiltrating into our daily lives, providing important measurement and collection tools to inform us of every decision. Millions of sensors and devices continue to generate data and exchange important information through complex networks that support machine-to-machine communication and monitor and control critical smart world infrastructure. As a strategy to alleviate resource congestion escalation, edge computing has become a new paradigm for addressing the needs of the Internet of Things and localization computing. Compared to well-known cloud computing, edge computing migrates data calculations or storage to the edge of the network near the end-user. Thus, multiple compute nodes distributed across the network can offload computational pressure from a centralized data center and can significantly reduce latency in message exchanges. Besides, the distributed architecture balances network traffic and avoids spikes in traffic in the IoT network, reduces latency between edge/cloud servers and end-users, and reduces response time for real-time IoT applications compared to traditional cloud services. In this article, we conducted a comprehensive survey to analyze how edge computing can improve the performance of IoT networks. We classify edge calculations into different groups based on the architecture and study their performance by comparing network latency, bandwidth usage, power consumption, and overhead. Through the systematic introduction of the concept of edge computing, typical application scenarios, research status, and key technologies, it is considered that the development of edge computing is still in the initial stage. There are still many problems in practical applications that need to be solved, including optimizing edge computing performance, security, interoperability, and intelligent edge operations management services.
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