上海电力大学学报2024,Vol.40Issue(4) :377-382.DOI:10.3969/j.issn.2096-8299.2024.04.012

基于融合注意力机制的并列GRU应用层协议识别方法

Parallel GRU Application Layer Protocol Identification Method Based on Fusion Attention Mechanism

王硕 杨昱 黄琼 李超 郭仕然
上海电力大学学报2024,Vol.40Issue(4) :377-382.DOI:10.3969/j.issn.2096-8299.2024.04.012

基于融合注意力机制的并列GRU应用层协议识别方法

Parallel GRU Application Layer Protocol Identification Method Based on Fusion Attention Mechanism

王硕 1杨昱 2黄琼 1李超 1郭仕然1
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作者信息

  • 1. 上海电力大学,上海 200090
  • 2. 中国核工业第五建设有限公司,上海 201512
  • 折叠

摘要

针对并列门控循环神经网络(GRU)算法在处理序列信息时无法直接交流和共享信息,导致模块之间信息流动受限,从而影响准确率的问题,提出了一种基于融合注意力机制的并列GRU应用层协议识别方法.该方法利用注意力机制获得并列GRU算法中不同时间点输出之间的重要关系,使得模型能更好地捕获序列数据的特征信息,从而提高算法的准确率.在UNSW-NB15数据集上进行实验,结果表明:与并列GRU算法相比,所提算法的识别准确率提升了9.3%,且与其他代表性算法相比,准确率均有所提高.

Abstract

In order to solve the problem that the parallel GRU(gated recurrent unit)algorithm cannot directly communicate and share information in the processing sequence information,resulting in the limited information flow between modules,thus affecting the accuracy,a parallel GRU application layer protocol recognition method based on fusion attention mechanism was proposed.In this method,the attention mechanism is fused on the basis of parallel GRU,and the important relationship between the output of different time points in the parallel GRU algorithm is obtained by using the attention mechanism,so that the model can better capture the important relationship between the feature information of the sequence data and the time points,so as to improve the accuracy of the algorithm.The experimental results show that the accuracy of the proposed method is improved by 9.3%compared with the parallel GRU algorithm,and the accuracy is improved compared with common algorithms.

关键词

门控循环神经网络/注意力机制/协议识别

Key words

gated recurrent unit/attention mechanism/protocol identification

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出版年

2024
上海电力大学学报
上海电力学院

上海电力大学学报

影响因子:0.401
ISSN:2096-8299
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