DNFD-SRU: A Distributed Network Fault Detection Method Based on SRU

Di Liu, Zhizhao Feng, Zhao Du
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Abstract

Traditional network fault detection methods need to collect data for training, which has data security problems. In recent years, as people pay more and more attention to data privacy, how to ensure data security has become more and more important. At the same time, because the network fault detection needs to meet certain real-time requirements, how to improve the detection speed is also an urgent problem to be solved. Based on the above two problems, this paper proposes a network fault detection algorithm DNFD-SRU based on federated learning and SRU. Federated learning can train the model on the premise of ensuring data security, and SRU has faster training speed.
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基于SRU的分布式网络故障检测方法DNFD-SRU
传统的网络故障检测方法需要采集数据进行训练,存在数据安全问题。近年来,随着人们对数据隐私的日益重视,如何确保数据安全变得越来越重要。同时,由于网络故障检测需要满足一定的实时性要求,如何提高检测速度也是一个亟待解决的问题。针对以上两个问题,本文提出了一种基于联邦学习和SRU的网络故障检测算法DNFD-SRU。联邦学习可以在保证数据安全的前提下训练模型,并且SRU具有更快的训练速度。
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