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

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Pascal Riedel , Kaouther Belkilani , Manfred Reichert , Gerd Heilscher , Reinhold von Schwerin
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引用次数: 0

Abstract

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.
利用 LSTM 和 GRU,通过具有差分隐私的联合学习加强光伏发电上网功率预测
鉴于光伏发电固有的波动性,准确预测太阳能输出和电网馈入对于优化电网运行至关重要。数据驱动方法有助于智能电网中有效的供需管理,但由于天气依赖性和数据隐私限制,预测太阳能发电量仍具有挑战性。传统的深度学习(DL)方法需要访问集中的训练数据,从而导致安全和隐私风险。为了应对这些挑战,本研究利用联合学习(FL)预测低压电网的上网电量。我们提出了一种自下而上、保护隐私的预测方法,利用差分隐私(DP)来增强用户侧能源分析的数据隐私。本研究旨在利用安装在德国南部城市的三个住宅光伏系统的三年电表数据,结合辐照度天气数据来准确预测光伏发电量,从而证明增强型 FL 方法的可行性。在实验中,DL 模型长短期记忆(LSTM)和门控递归单元(GRU)与 DP 进行了联合和集成。因此,联合 LSTM 和 GRU 模型与集中式和本地基线模型进行了滚动 5 倍交叉验证比较,以评估它们各自的性能。通过利用 FedYogi 和 FedAdam 等先进的 FL 算法,我们提出的方法不仅能高精度预测连续能源数据,R2 达到 97.68%,还能遵守严格的隐私标准,为应对智能电网分析挑战提供可扩展的解决方案,从而清楚地表明所提出的方法大有可为,值得进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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