物联网与云、雾和边缘计算的整合:综述

Heorhii Kuchuk, Eduard Malokhvii
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摘要

综述的目的。本文深入探讨了物联网(IoT)技术与云、雾和边缘计算范例的整合,研究了其对计算架构的变革性影响。综述方法。本文首先概述了物联网的发展历程及其在全球范围内的广泛应用,然后强调了整合云、雾和边缘计算以满足物联网生态系统对实时数据处理、低延迟通信和可扩展基础设施不断升级的需求的日益重要性。调查报告细致剖析了每种计算模式,强调了物联网、云计算、边缘计算和雾计算的独特特点、优势和挑战。讨论深入探讨了这些技术各自的优势和局限性,解决了延迟、带宽消耗、安全性和数据隐私等问题。此外,本文还探讨了物联网与云计算之间的协同作用,认为云计算是处理物联网设备产生的大量数据流的后端解决方案。审查结果。与不可靠的数据处理和隐私问题有关的挑战得到了认可,强调了采取强有力的安全措施和监管框架的必要性。研究了边缘计算与物联网的整合,展示了边缘节点利用物联网设备的剩余计算能力提供附加服务的共生关系。论文强调了与边缘计算系统异构性相关的挑战,并介绍了将计算卸载作为移动边缘计算延迟最小化策略的研究。论文深入探讨了雾计算在提高带宽、减少延迟和为物联网应用提供可扩展性方面的中介作用。论文承认了雾计算中与安全、认证和分布式拒绝服务有关的挑战。本文还探讨了应对雾物联网环境中资源管理挑战的创新算法。结论。调查报告最后深入探讨了云、雾和边缘计算的协作整合,以形成一个具有凝聚力的物联网计算架构。未来展望部分预计了 6G 技术在充分释放物联网潜力方面的作用,强调了远程医疗、智慧城市和增强型远程学习等应用。网络安全问题、能源消耗和标准化挑战被确定为未来研究的关键领域。
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INTEGRATION OF IOT WITH CLOUD, FOG, AND EDGE COMPUTING: A REVIEW
Purpose of review. The paper provides an in-depth exploration of the integration of Internet of Things (IoT) technologies with cloud, fog, and edge computing paradigms, examining the transformative impact on computational architectures. Approach to review. Beginning with an overview of IoT's evolution and its surge in global adoption, the paper emphasizes the increasing importance of integrating cloud, fog, and edge computing to meet the escalating demands for real-time data processing, low-latency communication, and scalable infrastructure in the IoT ecosystem. The survey meticulously dissects each computing paradigm, highlighting the unique characteristics, advantages, and challenges associated with IoT, cloud computing, edge computing, and fog computing. The discussion delves into the individual strengths and limitations of these technologies, addressing issues such as latency, bandwidth consumption, security, and data privacy. Further, the paper explores the synergies between IoT and cloud computing, recognizing cloud computing as a backend solution for processing vast data streams generated by IoT devices. Review results. Challenges related to unreliable data handling and privacy concerns are acknowledged, emphasizing the need for robust security measures and regulatory frameworks. The integration of edge computing with IoT is investigated, showcasing the symbiotic relationship where edge nodes leverage the residual computing capabilities of IoT devices to provide additional services. The challenges associated with the heterogeneity of edge computing systems are highlighted, and the paper presents research on computational offloading as a strategy to minimize latency in mobile edge computing. Fog computing's intermediary role in enhancing bandwidth, reducing latency, and providing scalability for IoT applications is thoroughly examined. Challenges related to security, authentication, and distributed denial of service in fog computing are acknowledged. The paper also explores innovative algorithms addressing resource management challenges in fog-IoT environments. Conclusions. The survey concludes with insights into the collaborative integration of cloud, fog, and edge computing to form a cohesive computational architecture for IoT. The future perspectives section anticipates the role of 6G technology in unlocking the full potential of IoT, emphasizing applications such as telemedicine, smart cities, and enhanced distance learning. Cybersecurity concerns, energy consumption, and standardization challenges are identified as key areas for future research.
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