智能电网的联合学习:关于应用和潜在漏洞的调查

Zikai Zhang, Suman Rath, Jiaohao Xu, Tingsong Xiao
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引用次数: 0

摘要

智能电网(SG)是一种重要的能源基础设施,它收集实时用电数据,利用信息和通信技术(ICT)预测未来的能源需求。由于人们越来越关注智能电网中的数据安全和隐私问题,联合学习(FL)已成为一种新兴的培训框架。联合学习通过在不共享物联网设备隐私数据的情况下进行协作模型训练,在SG中实现了隐私、效率和准确性之间的平衡。在本研究中,我们全面回顾了在发电、输配电和消费三个阶段设计基于 FL 的 SG 系统的最新进展。最后,我们讨论了最先进的 FL 研究与其在 SG 中的实际应用之间的差距,并提出了未来的研究方向。这些研究的重点是基于 FL 的 SG 系统的潜在攻击和防御策略,以及建立强大的基于 FL 的 SG 基础设施的必要性。与传统的针对 SG 系统中集中式机器学习方法的安全问题的调查不同,本调查首次专门研究了基于 FL 的 SG 系统中的应用和安全问题。我们的目的是激发对基于 FL 的 SG 系统的应用和鲁棒性改进的进一步研究。
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Federated Learning for Smart Grid: A Survey on Applications and Potential Vulnerabilities
The Smart Grid (SG) is a critical energy infrastructure that collects real-time electricity usage data to forecast future energy demands using information and communication technologies (ICT). Due to growing concerns about data security and privacy in SGs, federated learning (FL) has emerged as a promising training framework. FL offers a balance between privacy, efficiency, and accuracy in SGs by enabling collaborative model training without sharing private data from IoT devices. In this survey, we thoroughly review recent advancements in designing FL-based SG systems across three stages: generation, transmission and distribution, and consumption. Additionally, we explore potential vulnerabilities that may arise when implementing FL in these stages. Finally, we discuss the gap between state-of-the-art FL research and its practical applications in SGs and propose future research directions. These focus on potential attack and defense strategies for FL-based SG systems and the need to build a robust FL-based SG infrastructure. Unlike traditional surveys that address security issues in centralized machine learning methods for SG systems, this survey specifically examines the applications and security concerns in FL-based SG systems for the first time. Our aim is to inspire further research into applications and improvements in the robustness of FL-based SG systems.
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