Privacy-Preserving Generation Fraud Detection for Distributed Photovoltaic Systems: A Solar Irradiance-Fused Federated Learning Framework
Xiaolu Chen, Chenghao Huang, Yanru Zhang, Hao Wang

TL;DR
This paper introduces a privacy-preserving federated learning framework for detecting generation fraud in distributed residential photovoltaic systems, effectively handling data privacy, class imbalance, and scalability challenges.
Contribution
It proposes a novel federated learning approach with a co-attention detection model and prototype alignment for PV generation fraud detection.
Findings
Outperforms state-of-the-art FL methods in real-world PV datasets.
Demonstrates scalability across different community sizes.
Shows robustness to class imbalance in fraud detection.
Abstract
The wide adoption of residential photovoltaic (PV) systems introduces new challenges for generation fraud detection (FD). Unlike traditional electricity theft detection, which focuses on electricity consumption-side behavior, PV generation fraud detection (PVG-FD) is complicated by the inherent intermittency and uncertainty of PV generation. The distributed nature of PV systems poses further challenges for centralized PVG-FD approaches due to scalability and privacy concerns. This paper develops a privacy-preserving distributed PVG-FD framework based on federated learning (FL). In this framework, a utility company manages multiple household communities, where each of which is equipped with a local detector. The framework integrates a novel detection model architecture with privacy-preserving global collaboration. Each community's local model fuses PV generation and weather data via a…
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