Privacy-Preserving and Efficient Data Collection Scheme for AMI Networks Using Deep Learning
Mohamed I. Ibrahem, Mohamed Mahmoud, Mostafa M. Fouda, Fawaz Alsolami,, Waleed Alasmary, and Xuemin (Sherman) Shen

TL;DR
This paper introduces STDL, a deep learning-based scheme that enhances privacy in AMI data collection by intelligently sending spoofed readings, significantly reducing privacy risks while maintaining transmission efficiency.
Contribution
The paper presents a novel deep learning approach for privacy-preserving data collection in AMI networks, including a defense mechanism against pattern analysis attacks.
Findings
Reduces attacker's success rate to 13.52% with defense model knowledge
Decreases data transmissions by approximately 41%
Effectively thwarts privacy attacks with high transmission efficiency
Abstract
In advanced metering infrastructure (AMI), smart meters (SMs), which are installed at the consumer side, send fine-grained power consumption readings periodically to the electricity utility for load monitoring and energy management. Change and transmit (CAT) is an efficient approach to collect these readings, where the readings are not transmitted when there is no enough change in consumption. However, this approach causes a privacy problem that is by analyzing the transmission pattern of an SM, sensitive information on the house dwellers can be inferred. For instance, since the transmission pattern is distinguishable when dwellers are on travel, attackers may analyze the pattern to launch a presence-privacy attack (PPA) to infer whether the dwellers are absent from home. In this paper, we propose a scheme, called "STDL", for efficient collection of power consumption readings in AMI…
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Taxonomy
TopicsSmart Grid Security and Resilience · Electricity Theft Detection Techniques · Internet Traffic Analysis and Secure E-voting
