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A Privacy-Preserving-Framework-Based Blockchain and Deep Learning for Protecting Smart Power Networks

机译:基于隐私保留框架的区块链和保护智能电力网络的深度学习

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摘要

Modern power systems depend on cyber-physical systems to link physical devices and control technologies. A major concern in the implementation of smart power networks is to minimize the risk of data privacy violation (e.g., by adversaries using data poisoning and inference attacks). In this article, we propose a privacy-preserving framework to achieve both privacy and security in smart power networks. The framework includes two main modules: a two-level privacy module and an anomaly detection module. In the two-level privacy module, an enhanced-proof-of-work-technique-based blockchain is designed to verify data integrity and mitigate data poisoning attacks, and a variational autoencoder is simultaneously applied for transforming data into an encoded format for preventing inference attacks. In the anomaly detection module, a long short-term memory deep learning technique is used for training and validating the outputs of the two-level privacy module using two public datasets. The results highlight that the proposed framework can efficiently protect data of smart power networks and discover abnormal behaviors, in comparison to several state-of-the-art techniques.
机译:现代电力系统依赖于网络物理系统,以将物理设备和控制技术联系起来。实施智能电网实施的主要问题是最大限度地减少数据隐私违规的风险(例如,使用数据中毒和推理攻击的对手)。在本文中,我们提出了隐私保留框架,以实现智能电网的隐私和安全性。该框架包括两个主模块:两级隐私模块和异常检测模块。在两级隐私模块中,基于增强的基于技术的基于技术的区块链Clinchain旨在验证数据完整性和缓解数据中毒攻击,并且同时将数据转换为用于防止推理的编码格式的变化性AutoEncoder攻击。在异常检测模块中,使用两个公共数据集用于训练和验证两级隐私模块的输出的长短期内存深度学习技术。结果突出显示所提出的框架可以有效保护智能电网数据,并与几种最先进的技术相比,发现异常行为。

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