A Federated Learning Framework for Smart Grids: Securing Power Traces in Collaborative Learning
Haizhou Liu, Xuan Zhang, Xinwei Shen, Hongbin Sun

TL;DR
This paper introduces a federated learning framework for smart grids that enables collaborative analysis of power data while preserving privacy, using encryption schemes like Paillier to ensure lossless and secure model training.
Contribution
It adapts federated learning to smart grid data, employing both horizontal and vertical schemes for privacy-preserving power consumption modeling.
Findings
Models are lossless and privacy-preserving with encryption.
Federated learning effectively captures power consumption patterns.
Framework applicable to various smart grid components.
Abstract
With the deployment of smart sensors and advancements in communication technologies, big data analytics have become vastly popular in the smart grid domain, informing stakeholders of the best power utilization strategy. However, these power-related data are stored and owned by different parties. For example, power consumption data are stored in numerous transformer stations across cities; mobility data of the population, which are important indicators of power consumption, are held by mobile companies. Direct data sharing might compromise party benefits, individual privacy and even national security. Inspired by the federated learning scheme from Google AI, we propose a federated learning framework for smart grids, which enables collaborative learning of power consumption patterns without leaking individual power traces. Horizontal federated learning is employed when data are scattered…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Internet Traffic Analysis and Secure E-voting
