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一种面向电能量数据的联邦学习可靠性激励机制
引用本文:王鑫,周泽宝,余芸,陈禹旭,任昊文,蒋一波,孙凌云.一种面向电能量数据的联邦学习可靠性激励机制[J].计算机科学,2022,49(3):31-38.
作者姓名:王鑫  周泽宝  余芸  陈禹旭  任昊文  蒋一波  孙凌云
作者单位:浙江工业大学计算机科学与技术学院 杭州 310023;浙江大学南方电网人工智能创新联合研究中心 杭州 310058;浙江大学计算机科学与技术学院 杭州 310058,浙江工业大学计算机科学与技术学院 杭州 310023,中国南方电网数字电网研究院有限公司 广州 510663,浙江大学南方电网人工智能创新联合研究中心 杭州 310058;浙江大学计算机科学与技术学院 杭州 310058
摘    要:联邦学习解决了数据安全日益受到重视条件下的数据互用难题,但是传统联邦学习缺少鼓励和吸引数据拥有方参与到联邦学习中的激励机制,联邦学习审核机制的缺失给恶意节点进行破坏攻击提供了可能性.针对这个问题,文中提出基于区块链技术的面向电能量数据的可靠的联邦学习激励机制.该方法从对数据参与方的训练参与进行奖励和对数据参与方的数据可...

关 键 词:电力计量  联邦学习  区块链  激励机制  可靠性  声望模型

Reliable Incentive Mechanism for Federated Learning of Electric Metering Data
WANG Xin,ZHOU Ze-bao,YU Yun,CHEN Yu-xu,REN Hao-wen,JIANG Yi-bo,SUN Ling-yun.Reliable Incentive Mechanism for Federated Learning of Electric Metering Data[J].Computer Science,2022,49(3):31-38.
Authors:WANG Xin  ZHOU Ze-bao  YU Yun  CHEN Yu-xu  REN Hao-wen  JIANG Yi-bo  SUN Ling-yun
Affiliation:(College of Computer Science and Technology,Zhejiang University of Technology,Hangzhou 310023,China;Digital Grid Research Institute Co.Ltd.,China Southern Power Grid,Guangzhou 510663,China;Zhejiang University-China Southern Power Grid Joint Research Centre on AI,Hangzhou 310058,China;College of Computer Science and Technology,Zhejiang University,Hangzhou 310058,China)
Abstract:Federated learning has solved the problem of data interoperability under the premise of satisfying user privacy protection and data security.However,traditional federated learning lacks an incentive mechanism to encourage and attract data owners to participate in federated learning.Meanwhile,the lack of a federated learning audit mechanism provides the possibility for malicious nodes to conduct sabotage attacks.In response to this problem,this paper proposes a reliable federated learning incentive mechanism for electric metering data based on blockchain technology.This method starts from two aspects:rewarding data participants for training participation and evaluating data reliability for all of them.We design an algorithm to evaluate the training effect of data participants.The contribution of data participants is determined from the perspective of training effect and training cost,and the participants are rewarded according to the contribution.At the same time,a reputation model is established for the reliability of the data participants,and the reputation of the data participants is updated according to the training effect,so as to achieve the reliability assessment for data participants.Based on the open-source framework of federated learning and real electric metering data,a case study is carried out,and the obtained results verify the effectiveness of our method.
Keywords:Electricity metering  Federated learning  Blockchain  Incentive mechanism  Reliability  Reputation model
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