Privacy Protection of Grid Users Data with Blockchain and Adversarial Machine Learning
Ibrahim Yilmaz, Kavish Kapoor, Ambareen Siraj, Mahmoud Abouyoussef

TL;DR
This paper proposes a blockchain and adversarial machine learning-based framework to protect smart meter users' privacy from occupancy detection attacks while maintaining billing accuracy and operational efficiency.
Contribution
It introduces the AMLODA-B framework that employs LSTM-based adversarial techniques to prevent occupancy detection, enhancing privacy without relying on intermediaries.
Findings
High accuracy occupancy detection using deep neural networks.
AMLODA-B effectively prevents occupancy detection attacks.
Privacy is preserved without compromising billing accuracy.
Abstract
Utilities around the world are reported to invest a total of around 30 billion over the next few years for installation of more than 300 million smart meters, replacing traditional analog meters [1]. By mid-decade, with full country wide deployment, there will be almost 1.3 billion smart meters in place [1]. Collection of fine grained energy usage data by these smart meters provides numerous advantages such as energy savings for customers with use of demand optimization, a billing system of higher accuracy with dynamic pricing programs, bidirectional information exchange ability between end-users for better consumer-operator interaction, and so on. However, all these perks associated with fine grained energy usage data collection threaten the privacy of users. With this technology, customers' personal data such as sleeping cycle, number of occupants, and even type and number of…
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