Fast Detection of Advanced Persistent Threats for Smart Grids: A Deep Reinforcement Learning Approach
Author
Abstract

Data management systems in smart grids have to address advanced persistent threats (APTs), where malware injection methods are performed by the attacker to launch stealthy attacks and thus steal more data for illegal advantages. In this paper, we present a hierarchical deep reinforcement learning based APT detection scheme for smart grids, which enables the control center of the data management system to choose the APT detection policy to reduce the detection delay and improve the data protection level without knowing the attack model. Based on the state that consists of the size of the gathered power usage data, the priority level of the data, and the detection history, this scheme develops a two-level hierarchical structure to compress the high-dimensional action space and designs four deep dueling networks to accelerate the optimization speed with less over-estimation. Detection performance bound is provided and simulation results show that the proposed scheme improves both the data protection level and the utility of the control center with less detection delay.

Year of Publication
2022
Date Published
may
Publisher
IEEE
Conference Location
Seoul, Korea, Republic of
ISBN Number
978-1-5386-8347-7
URL
https://ieeexplore.ieee.org/document/9838858/
DOI
10.1109/ICC45855.2022.9838858
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