新型隐身通信轮攻击与鲁棒激励联邦平均负荷预测

IF 3.9 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Habib Ullah Manzoor;Kamran Arshad;Khaled Assaleh;Ahmed Zoha
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引用次数: 0

摘要

联邦学习(FL)在能源预测应用中得到了突出的应用。尽管具有优势,但FL仍然容易受到威胁预测模型可靠性的对抗性攻击。本研究引入了一种隐形攻击,联邦通信回合攻击(federal Communication Round attack, Fed-CRA),它在不影响预测精度的情况下增加了通信回合。在动态能源预测场景中,增加的通信轮次可能会延迟决策,降低系统响应能力和成本效益。两个数据集的实验验证表明,Fed-CRA在AEP数据集中增加了574%(从72次增加到485次),在COMED数据集中增加了237%(从92次增加到310次)。在保持预测准确性的前提下,能耗相应增加573%(从41.04 kWh增加到276.35 kWh)和237%(从52.44 kWh增加到176.65 kWh)。为了应对这种攻击,我们提出了联邦激励平均(Fed-InA),这是一个博弈论启发的框架,奖励诚实的客户,并根据他们的贡献惩罚不诚实的客户。结果表明,在保持预测性能的同时,Fed-InA在AEP数据集中减少了85%由Fed-CRA引起的额外沟通轮数,在COMED数据集中减少了70%。Fed-InA实现了与联邦平均(fedag)相当的资源效率,并在处理非iid数据方面表现出鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Stealth Communication Round Attack and Robust Incentivized Federated Averaging for Load Forecasting
Federated learning (FL) has gained prominence in energy forecasting applications. Despite its advantages, FL remains vulnerable to adversarial attacks that threaten the reliability of predictive models. This study introduces a stealth attack, Federated Communication Round Attack (Fed-CRA), which increases communication rounds without affecting forecasting accuracy. Increased communication rounds can delay decision-making, reducing system responsiveness and cost-effectiveness in dynamic energy forecasting scenarios. Experimental validation on two datasets demonstrated that Fed-CRA increased communication rounds by 574% (from 72 to 485) in the AEP dataset and by 237% (from 92 to 310) in the COMED dataset. This led to a corresponding rise in energy consumption by 573% (from 41.04 kWh to 276.35 kWh) and 237% (from 52.44 kWh to 176.65 kWh), respectively, while preserving forecasting accuracy. To counter this attack, we proposed Federated Incentivized Averaging (Fed-InA), a game theory-inspired framework that rewards honest clients and penalizes dishonest ones based on their contributions. Results showed that Fed-InA reduced the additional communication rounds caused by Fed-CRA by 85% in the AEP dataset and 70% in the COMED dataset, while maintaining forecasting performance. Fed-InA achieves resource efficiency comparable to Federated Averaging (FedAvg) and demonstrates robustness in handling non-IID data.
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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