基于群签名的智能电网联邦学习

Sneha Kanchan, Ajit Kumar, A. Saqib, B. Choi
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引用次数: 1

摘要

智能电网是当今能源分配系统的需要,它在供应商和消费者之间保持系统的通信。通常,这些网格需要与人机界面(HMI)服务器进行通信,以了解客户需求和可用性的发现。然而,一些外部实体可能会危及HMI服务器,这往往会滥用智能电网的个人信息。因此,网格不应该向服务器透露它们或它们的客户的身份。联邦学习(FL)可以解决这种情况,即可以在不泄露网格身份的情况下收集来自各种智能网格的数据。我们提出了一种基于组签名的联邦签名,其中网格组件使用组签名而不是个人签名进行签名。我们已经用互联网安全协议和应用程序的自动验证(AVISPA)模拟器验证了我们算法的安全性。
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Group Signature Based Federated Learning in Smart Grids
Smart Grids are the need of today's energy distribution system, which maintains a systematic communication between suppliers and consumers. Often these grids need to communicate to the Human Machine Interface (HMI) server regarding their findings of the customer needs and availability. However, some external entities might compromise the HMI server, which tends to misuse smart grids' personal information. Hence, the grids should not reveal their or their customer's identity to the server. Federated Learning (FL) can solve this situation where the data from various smart grids can be collected without disclosing the grid's identity. We have proposed a group signature-based federated signature-based in which grid components sign with the group signature instead of their personal signatures. We have verified the security of our algorithm with the Automated Validation of Internet Security Protocols and Applications (AVISPA) simulator.
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