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Leveraging A New GAN-based Transformer with ECDH Crypto-system for Enhancing Energy Theft Detection in Smart Grid

Yang Yang, Xun Yuan, Arwa Alromih, Aryan Mohammadi Pasikhani, Prosanta Gope, Biplab Sikdar

TL;DR

A novel GAN-Transformer-based split learning framework that leverages the strengths of the transformer architecture, which is known for its capability to process long-range dependencies in energy consumption data, to effectively combat privacy leakage in split learning scenarios targeted at AI-enabled adversaries.

Abstract

Detecting energy theft is vital for effectively managing power grids, as it ensures precise billing and prevents financial losses. Split-learning emerges as a promising decentralized machine learning technique for identifying energy theft while preserving user data confidentiality. Nevertheless, traditional split learning approaches are vulnerable to privacy leakage attacks, which significantly threaten data confidentiality. To address this challenge, we propose a novel GAN-Transformer-based split learning framework in this paper. This framework leverages the strengths of the transformer architecture, which is known for its capability to process long-range dependencies in energy consumption data. Thus, it enhances the accuracy of energy theft detection without compromising user privacy. A distinctive feature of our approach is the deployment of a novel mask-based method, marking a first in its field to effectively combat privacy leakage in split learning scenarios targeted at AI-enabled adversaries. This method protects sensitive information during the model's training phase. Our experimental evaluations indicate that the proposed framework not only achieves accuracy levels comparable to conventional methods but also significantly enhances privacy protection. The results underscore the potential of the GAN-Transformer split learning framework as an effective and secure tool in the domain of energy theft detection.

Leveraging A New GAN-based Transformer with ECDH Crypto-system for Enhancing Energy Theft Detection in Smart Grid

TL;DR

A novel GAN-Transformer-based split learning framework that leverages the strengths of the transformer architecture, which is known for its capability to process long-range dependencies in energy consumption data, to effectively combat privacy leakage in split learning scenarios targeted at AI-enabled adversaries.

Abstract

Detecting energy theft is vital for effectively managing power grids, as it ensures precise billing and prevents financial losses. Split-learning emerges as a promising decentralized machine learning technique for identifying energy theft while preserving user data confidentiality. Nevertheless, traditional split learning approaches are vulnerable to privacy leakage attacks, which significantly threaten data confidentiality. To address this challenge, we propose a novel GAN-Transformer-based split learning framework in this paper. This framework leverages the strengths of the transformer architecture, which is known for its capability to process long-range dependencies in energy consumption data. Thus, it enhances the accuracy of energy theft detection without compromising user privacy. A distinctive feature of our approach is the deployment of a novel mask-based method, marking a first in its field to effectively combat privacy leakage in split learning scenarios targeted at AI-enabled adversaries. This method protects sensitive information during the model's training phase. Our experimental evaluations indicate that the proposed framework not only achieves accuracy levels comparable to conventional methods but also significantly enhances privacy protection. The results underscore the potential of the GAN-Transformer split learning framework as an effective and secure tool in the domain of energy theft detection.

Paper Structure

This paper contains 32 sections, 6 equations, 8 figures, 3 tables, 2 algorithms.

Figures (8)

  • Figure 1: System Model
  • Figure 2: Threat Model
  • Figure 4: Experiment Platform
  • Figure 5: Exploratory Data Analysis for Selected Features
  • Figure 6: Complexity Benchmark with the related encryption work
  • ...and 3 more figures