基于区块链的分散式异构联邦蒸馏学习

Hong Zhu, Lisha Gao, Yitian Sha, Nan Xiang, Yue Wu, Shuo Han
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引用次数: 0

摘要

负荷预测是智能虚拟电厂管理的一个重要方面,也是平衡分布式电网与传统电网关系的一种手段。然而,由于用电高峰的不断出现,电网的供电质量无法得到保证。因此,需要一种智能的计算方法来有效地预测负荷,以便更好地进行电网调度,保证电网的稳定运行。本文提出了一种分散式异构联邦蒸馏学习算法(DHFDL),以促进区块链中不同联邦之间的可信联邦学习(FL)。该算法包括两个阶段:常识积累阶段和个性化训练阶段。在第一阶段,区块链上的每个联邦都被视为一个元分布。循环汇总每个联邦的知识后,将模型上传到区块链。在第二阶段,区块链上的其他联盟下载训练好的模型进行个性化训练,这两种训练都是基于知识蒸馏的。实验结果表明,与fedag和基于区块链的委员会共识联邦学习框架(BFLC)相比,本文提出的DHFDL算法可以抵御更高比例的恶意代码。此外,通过将异步共识与FL模型训练过程相结合,DHFDL的训练时间最短,提高了分散FL的训练效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decentralized Heterogeneous Federal Distillation Learning Based on Blockchain
Load forecasting is a crucial aspect of intelligent Virtual Power Plant (VPP) management and a means of balancing the relationship between distributed power grids and traditional power grids. However, due to the continuous emergence of power consumption peaks, the power supply quality of the power grid cannot be guaranteed. Therefore, an intelligent calculation method is required to effectively predict the load, enabling better power grid dispatching and ensuring the stable operation of the power grid. This paper proposes a decentralized heterogeneous federated distillation learning algorithm (DHFDL) to promote trusted federated learning (FL) between different federates in the blockchain. The algorithm comprises two stages: common knowledge accumulation and personalized training. In the first stage, each federate on the blockchain is treated as a meta-distribution. After aggregating the knowledge of each federate circularly, the model is uploaded to the blockchain. In the second stage, other federates on the blockchain download the trained model for personalized training, both of which are based on knowledge distillation. Experimental results demonstrate that the DHFDL algorithm proposed in this paper can resist a higher proportion of malicious code compared to FedAvg and a Blockchain-based Federated Learning framework with Committee consensus (BFLC). Additionally, by combining asynchronous consensus with the FL model training process, the DHFDL training time is the shortest, and the training efficiency of decentralized FL is improved.
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