FL‐ADS: Federated learning anomaly detection system for distributed energy resource networks

Đã lưu trong:
Chi tiết về thư mục
Xuất bản năm:IET Cyber-Physical Systems : Theory & Applications vol. 10, no. 1 (Jan/Dec 2025)
Tác giả chính: Purohit, Shaurya
Tác giả khác: Govindarasu, Manimaran, Blakely, Benjamin
Được phát hành:
John Wiley & Sons, Inc.
Những chủ đề:
Truy cập trực tuyến:Citation/Abstract
Full Text
Full Text - PDF
Các nhãn: Thêm thẻ
Không có thẻ, Là người đầu tiên thẻ bản ghi này!
Miêu tả
Bài tóm tắt:With the ongoing development of Distributed Energy Resources (DER) communication networks, the imperative for strong cybersecurity and data privacy safeguards is increasingly evident. DER networks, which rely on protocols such as Distributed Network Protocol 3 and Modbus, are susceptible to cyberattacks such as data integrity breaches and denial of service due to their inherent security vulnerabilities. This paper introduces an innovative Federated Learning (FL)‐based anomaly detection system designed to enhance the security of DER networks while preserving data privacy. Our models leverage Vertical and Horizontal Federated Learning to enable collaborative learning while preserving data privacy, exchanging only non‐sensitive information, such as model parameters, and maintaining the privacy of DER clients' raw data. The effectiveness of the models is demonstrated through its evaluation on datasets representative of real‐world DER scenarios, showcasing significant improvements in accuracy and F1‐score across all clients compared to the traditional baseline model. Additionally, this work demonstrates a consistent reduction in loss function over multiple FL rounds, further validating its efficacy and offering a robust solution that balances effective anomaly detection with stringent data privacy needs.
số ISSN:2398-3396
DOI:10.1049/cps2.70001
Nguồn:Advanced Technologies & Aerospace Database