4.8 Article

Privacy-Preserving Spatiotemporal Scenario Generation of Renewable Energies: A Federated Deep Generative Learning Approach

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 18, Issue 4, Pages 2310-2320

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2021.3098259

Keywords

Data models; Collaborative work; Generators; Training; Renewable energy sources; Wind power generation; Servers; Deep generative models (DGMs); federated learning; least square generative adversarial networks (GANs); renewable energy; scenario generation; uncertainty modeling

Funding

  1. National Natural Science Foundation of China-State Grid Corporation of China Smart Grid Joint Fund Key Program [U2066208]
  2. Natural Science Foundation of Jilin Province, China [2020122349JC]

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This article proposes a novel federated deep generative learning framework, Fed-LSGAN, for generating high-quality scenarios in power systems with high-penetration renewables. The framework integrates federated learning and least square generative adversarial networks (LSGANs) to achieve privacy-preserving scenario generation and improve generation quality using the least squares loss function.
Scenario generation is a fundamental and crucial tool for decision-making in power systems with high-penetration renewables. Based on big historical data, in this article, a novel federated deep generative learning framework, called Fed-LSGAN, is proposed by integrating federated learning and least square generative adversarial networks (LSGANs) for renewable scenario generation. Specifically, federated learning learns a shared global model in a central server from renewable sites at network edges, which enables the Fed-LSGAN to generate scenarios in a privacy-preserving manner without sacrificing the generation quality by transferring model parameters, rather than all data. Meanwhile, the LSGANs-based deep generative model generates scenarios that conform to the distribution of historical data through fully capturing the spatial-temporal characteristics of renewable powers, which leverages the least squares loss function to improve the training stability and generation quality. The simulation results demonstrate that the proposal manages to generate high-quality renewable scenarios and outperforms the state-of-the-art centralized methods. Besides, an experiment with different federated learning settings is designed and conducted to verify the robustness of our method.

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