Construction and Research on Cloud-edge Collaborative Power Measurement and Security Model

Jiajia Huang, Ying Sun, Xiao Jiang, Youpeng Huang, DongXu Zhou
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Abstract

Accurate power consumption assessment is of critical importance in the fast-evolving world of cloud and edge computing. These technologies enable rapid data processing and storage but they also require huge amounts of energy. This energy requirement directly impacts operational costs, as well as environmental responsibility. We are conducting research to develop a specialized cloud-edge power measurement and security model. This model delivers reliable power usage data from these systems while maintaining security for the data they process and store. A combination of simulation-based analysis and real-world experimentation helped us to deliver these results. Monte Carlo based simulations produced power usage predictions under various conditions and Load Testing validated their real-world performance. A Threat Modeling-based security study identified potential vulnerabilities and suggested protection protocols. A collaborative approach enhances power measurements accuracy and encourages secure operation of the combined cloud-edge systems. By fusing these metrics, a more efficient and secure operation of computing resources becomes possible. This research underscores the critical importance of developing advanced techniques for power metering and security in cloud-edge computing systems. Future research may focus on both expanding the model’s use to an array of larger, more complex networks, as well as the inclusion of AI driven predictive analytics to amplify accuracy of power management.
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云边协同电力计量与安全模型的构建与研究
在快速发展的云计算和边缘计算领域,准确的功耗评估至关重要。这些技术能够快速处理和存储数据,但同时也需要大量能源。这种能源需求直接影响到运营成本和环境责任。我们正在研究开发一种专门的云计算边缘电力测量和安全模型。该模型可提供来自这些系统的可靠用电数据,同时维护其处理和存储数据的安全性。模拟分析和实际实验相结合,帮助我们取得了这些成果。基于蒙特卡洛的仿真预测了各种条件下的用电量,负载测试则验证了其实际性能。基于威胁建模的安全研究确定了潜在漏洞并提出了保护协议。协作方法提高了功率测量的准确性,并促进了云边缘组合系统的安全运行。通过融合这些指标,可以更高效、更安全地运行计算资源。这项研究强调了在云边缘计算系统中开发先进的电能计量和安全技术的重要性。未来的研究重点可能是将该模型的使用范围扩大到一系列更大、更复杂的网络,以及纳入人工智能驱动的预测分析,以提高电源管理的准确性。
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