In practical applications,different power companies are unwilling to share personal transformer data with each other due to data privacy.Faced with such a data isolation scenario,the centralized learning method is dif...In practical applications,different power companies are unwilling to share personal transformer data with each other due to data privacy.Faced with such a data isolation scenario,the centralized learning method is difficult to be used to solve the problem of transformer fault diagnosis.In recent years,the emergence of federated learning(FL)has provided a secure and distributed learning framework.However,the unbalanced data from multiple participants may reduce the overall per-formance of FL,while an untrusted central server will threaten the data privacy and security of cli-ents.Thus,a fault diagnosis of intelligent distribution system method based on privacy-enhanced FL is proposed.Firstly,a globally shared dataset is established to effectively alleviate the impact of un-balanced data on the performance of the FedAvg algorithm.Then,Gaussian random noise is intro-duced during the parameter uploading process to further reduce the risk of data privacy leakage.Fi-nally,the effectiveness and superiority of the proposed method are verified through extensive experi-ments.展开更多
基金Supported by the Science and Technology Project of State Grid Zhejiang Electric Power Co.,Ltd(No.5211HZ230002).
文摘In practical applications,different power companies are unwilling to share personal transformer data with each other due to data privacy.Faced with such a data isolation scenario,the centralized learning method is difficult to be used to solve the problem of transformer fault diagnosis.In recent years,the emergence of federated learning(FL)has provided a secure and distributed learning framework.However,the unbalanced data from multiple participants may reduce the overall per-formance of FL,while an untrusted central server will threaten the data privacy and security of cli-ents.Thus,a fault diagnosis of intelligent distribution system method based on privacy-enhanced FL is proposed.Firstly,a globally shared dataset is established to effectively alleviate the impact of un-balanced data on the performance of the FedAvg algorithm.Then,Gaussian random noise is intro-duced during the parameter uploading process to further reduce the risk of data privacy leakage.Fi-nally,the effectiveness and superiority of the proposed method are verified through extensive experi-ments.