A blockchain-based decentralized collaborative learning model for reliable energy digital twins

Liang Qiao , Zhihan Lv
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引用次数: 4

Abstract

This paper proposes a blockchain-based decentralized collaborative learning method for the Industrial Internet environment to solve the trust and security issues in Federated Learning. Deploy a decentralized network for collaborative learning based on the alliance chain, design a block data structure suitable for asynchronous learning, and model three stages of computing event triggering, computing task distribution, and computing result integration for cross-domain device collaborative learning. List the critical steps for network deployment, including inspection, tearing down old networks, creating organizational encryption material, creating channels, and deploying chaincode. It also introduces the development of crucial chaincode such as initialization, creation, query, and modification. Finally, the correlation between the number of data pieces of the network, the number of communications, and the time of communications are analyzed through experiments. This paper also proposes a decentralized asynchronous collaborative learning algorithm, develops chaincode middleware between the blockchain network and Artificial Intelligence training, and conducts experimental analysis on the industrial steam volume prediction data set in thermal power generation. The performance on the data set, and the experimental results prove that the asynchronous collaborative learning algorithm proposed in this paper can achieve a good convergence effect. It is also compared with the single-machine single-card regression prediction algorithm, proving that the proposed model has better generalization.

一种基于区块链的分散协作学习模型,用于可靠的能源数字孪生
为解决联邦学习中的信任和安全问题,提出了一种基于区块链的工业互联网环境下的去中心化协同学习方法。部署基于联盟链的去中心化协同学习网络,设计适合异步学习的块数据结构,对跨域设备协同学习的计算事件触发、计算任务分配、计算结果集成三个阶段进行建模。列出网络部署的关键步骤,包括检查、拆除旧网络、创建组织加密材料、创建通道和部署链码。还介绍了关键链码的开发,如初始化、创建、查询和修改。最后,通过实验分析了网络数据块数、通信次数和通信时间之间的相关性。本文还提出了一种去中心化异步协同学习算法,开发了区块链网络与人工智能训练之间的链码中间件,并对火力发电工业蒸汽量预测数据集进行了实验分析。在数据集上的性能和实验结果都证明了本文提出的异步协同学习算法能够取得良好的收敛效果。并与单机单卡回归预测算法进行了比较,证明了该模型具有更好的泛化性。
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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CiteScore
13.80
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0.00%
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