基于安全联邦学习的分布式协同短期负荷预测方法OA
A distributed collaborative short-term load forecasting method based on secure federated learning
准确的短期负荷预测对电网高效调度和安全运行具有重要意义.当前,短期负荷预测方法多以中心化的方式训练深度学习预测模型.然而,中心化的数据收集可能违反电力公司对数据隐私的保护条例.为此,文中提出基于安全联邦学习的双向长短时记忆网络(secure federated learning based bidirectional long short-term memory network,SFL-Bi-LSTM),实现隐私保护的短期负荷分布式协同预测.首先,为更全面地挖掘负荷时序数据的时序特征,构建双向长短时记忆网络,同步挖掘前后双向时间相关性,从而提高预测精度;然后,考虑多个电力公司的模型协同训练中数据隐私问题,采用联邦学习将负荷数据的集中式收集替换为负荷预测模型参数的聚合,避免原始数据离开本地,从而保护数据隐私;进一步地,融合同态加密算法,以密文形式实现安全联邦聚合过程,避免利用负荷预测模型参数逆向反推出原始负荷数据的风险.文中在公开数据集上验证了所提方法的效果.结果表明,SFL-Bi-LSTM方法的分布式协同预测均方根误差达到 2.022 9 MW,能在保护各电力公司数据隐私的同时准确预测负荷;其在不同电力公司负荷预测中,均方根误差平均下降19.89%,具有较好的泛化能力.
Accurate short-term load forecasting is crucial for efficient grid dispatching and secure operation.Current methodologies predominantly employ centralized training of deep learning-based forecasting models.However,centralized data collection may violate data privacy regulations enforced by power utilities.To address this issue,this paper proposes a secure federated learning based bidirectional long short-term memory network(SFL-Bi-LSTM)to achieve privacy-preserving short-term load distributed collaborative forecasting.Specifically,SFL-Bi-LSTM incorporates a bidirectional long short-term memory network to comprehensively capture temporal features by simultaneously modeling forward and backward time dependencies,thereby enhancing prediction accuracy.To preserve data privacy during collaborative model training across multiple utilities,federated learning(FL)replaces centralized data collection with aggregated model parameters,ensuring raw load data remains local.Furthermore,homomorphic encryption is integrated to enable secure federated aggregation through ciphertext computation,effectively preventing potential reconstruction of raw load data via model parameter inversion attacks.Experimental validation on public datasets demonstrates that the proposed SFL-Bi-LSTM achieves a mean squared error of 2.022 9 MW in distributed collaborative forecasting while maintaining data privacy.Compared to conventional methods,it reduces the average mean squared error across different utilities by 19.89%,demonstrating its generalization capability.
邸强;马建功;李青;蔺红
新疆大学电气工程学院,新疆 乌鲁木齐 830047国网新疆电力有限公司电力科学研究院,新疆 乌鲁木齐 830011国网新疆电力有限公司电力科学研究院,新疆 乌鲁木齐 830011新疆大学电气工程学院,新疆 乌鲁木齐 830047
信息技术与安全科学
短期负荷预测隐私保护时空特征神经网络联邦学习同态加密
short-term load forecastingprivacy protectiontemporal-spatial featuresneural networksfederated learninghomomorphic encryption
《电力工程技术》 2026 (5)
61-68,156,9
国家自然科学基金资助项目(52367012)新疆维吾尔自治区自然科学基金资助项目(2022A01001-3)
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