Cross Domain Joint Modeling of Power Big Data Based on Secure Federated Learning
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刊名 《机械工程》
作者 Yun Dong Zhaoli Chen Xixiang Zhang Liyuan Zhang Xuhua Ai (Information Center,China Southern Power Grid Guangxi Power Grid Co Ltd,Guangxi,China) 英文名 Mechanical engineering 年,卷(期) 2025年,第1期
主办单位 环宇科学出版社;华文国际出版社 刊号 ISSN:2661-3530(P)/2661-3549(O) DOI

Cross Domain Joint Modeling of Power Big Data Based on Secure Federated Learning

With the rapid development of smart grids,traditional methods of power data transmission and data access sharing are increasingly inadequate in ensuring the privacy,security,and efficiency of power data.Therefore,this study proposes a cross-domain model for power big data based on secure federated learning.Initially,the study analyzes the specific architecture and existing challenges of the cross-domain joint model for power big data.To achieve secure aggregation of cross-domain data in a distributed environment,an integrated federated learning framework is employed to construct a cross-domain model with privacy protection.The results demonstrate that the leakage rate of shared data in the proposed model is less than 1%,and it takes approximately 2 seconds to transmit 100 data copies.The computational cost is significantly lower than that of traditional models.In practical applications,the relative error between the cross-domain aggregated data for model training and the standard data is less than 0.5%.The experimental data indicate that the model successfully balances privacy security,recommendation accuracy,and data authenticity,enabling secure and accurate data sharing.This advancement is expected to promote the development and application of cross-domain information sharing technology.

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