Enhancing PV feed-in power forecasting through federated learning with differential privacy using LSTM and GRU

被引:0
|
作者
Riedel, Pascal [1 ]
Belkilani, Kaouther [2 ]
Reichert, Manfred [1 ]
Heilscher, Gerd [2 ]
von Schwerin, Reinhold [1 ]
机构
[1] Ulm Univ, Inst Databases & Informat Syst, D-89081 Ulm, Germany
[2] Ulm Univ Appl Sci, Smart Grids Res Grp, D-89081 Ulm, Germany
关键词
Federated learning; Deep learning; Recurrent neural networks; Data privacy; Solar power forecasting; Smart grid; Residential photovoltaic; PHOTOVOLTAIC SYSTEMS; EXPERIENCE; NETWORKS;
D O I
10.1016/j.egyai.2024.100452
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Given the inherent fluctuation of photovoltaic (PV) generation, accurately forecasting solar power output and grid feed-in is crucial for optimizing grid operations. Data-driven methods facilitate efficient supply and demand management in smart grids, but predicting solar power remains challenging due to weather dependence and data privacy restrictions. Traditional deep learning (DL) approaches require access to centralized training data, leading to security and privacy risks. To navigate these challenges, this study utilizes federated learning (FL) to forecast feed-in power for the low-voltage grid. We propose a bottom-up, privacy- preserving prediction method using differential privacy (DP) to enhance data privacy for energy analytics on the customer side. This study aims at proving the viability of an enhanced FL approach by employing three years of meter data from three residential PV systems installed in a southern city of Germany, incorporating irradiance weather data for accurate PV power generation predictions. For the experiments, the DL models long short-term memory (LSTM) and gated recurrent unit (GRU) are federated and integrated with DP. Consequently, federated LSTM and GRU models are compared with centralized and local baseline models using rolling 5-fold cross-validation to evaluate their respective performances. By leveraging advanced FL algorithms such as FedYogi and FedAdam, we propose a method that not only predicts sequential energy data with high accuracy, achieving an R2 of 97.68%, but also adheres to stringent privacy standards, offering a scalable solution for the challenges of smart grids analytics, thus clearly showing that the proposed approach is promising and worth being pursued further.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] Enhancing Differential Privacy for Federated Learning at Scale
    Baek, Chunghun
    Kim, Sungwook
    Nam, Dongkyun
    Park, Jihoon
    IEEE ACCESS, 2021, 9 : 148090 - 148103
  • [2] Adaptive differential privacy in vertical federated learning for mobility forecasting
    Errounda, Fatima Zahra
    Liu, Yan
    FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 2023, 149 : 531 - 546
  • [3] FORECASTING WITH VISIBILITY USING PRIVACY PRESERVING FEDERATED LEARNING
    Zhang, Bo
    Tan, Wen Jun
    Cai, Wentong
    Zhang, Allan N.
    2022 WINTER SIMULATION CONFERENCE (WSC), 2022, : 2687 - 2698
  • [4] Forecasting Cryptocurrency Prices Using LSTM, GRU, and Bi-Directional LSTM: A Deep Learning Approach
    Seabe, Phumudzo Lloyd
    Moutsinga, Claude Rodrigue Bambe
    Pindza, Edson
    FRACTAL AND FRACTIONAL, 2023, 7 (02)
  • [5] Enhancing Privacy-Preserving Intrusion Detection through Federated Learning
    Alazab, Ammar
    Khraisat, Ansam
    Singh, Sarabjot
    Jan, Tony
    ELECTRONICS, 2023, 12 (16)
  • [6] A Framework for Privacy-Preserving in IoV Using Federated Learning With Differential Privacy
    Adnan, Muhammad
    Syed, Madiha Haider
    Anjum, Adeel
    Rehman, Semeen
    IEEE ACCESS, 2025, 13 : 13507 - 13521
  • [7] Privacy-Preserving Handover Optimization Using Federated Learning and LSTM Networks
    Chien, Wei-Che
    Huang, Yu
    Chang, Bo-Yu
    Hwang, Wu-Yuin
    SENSORS, 2024, 24 (20)
  • [8] A privacy-preserving framework integrating federated learning and transfer learning for wind power forecasting
    Tang, Yugui
    Zhang, Shujing
    Zhang, Zhen
    ENERGY, 2024, 286
  • [9] Deep Federated Learning-Based Privacy-Preserving Wind Power Forecasting
    Ahmadi, Amirhossein
    Talaei, Mohammad
    Sadipour, Masod
    Amani, Ali Moradi
    Jalili, Mahdi
    IEEE ACCESS, 2023, 11 : 39521 - 39530
  • [10] A blockchain-based framework for federated learning with privacy preservation in power load forecasting
    Mao, Qifan
    Wang, Liangliang
    Long, Yu
    Han, Lidong
    Wang, Zihan
    Chen, Kefei
    KNOWLEDGE-BASED SYSTEMS, 2024, 284