A Network Intrusion Detection Method Based on Improved Bi-LSTM in Internet of Things Environment
Author:
Affiliation:
1. Chongqing Vocational College of Applied Technology, China
2. School of Big Data and Intelligent Engineering, Chongqing University of Foreign Business and Economics, China
Abstract
When performing malicious network attack detection, traditional intrusion detection methods show their disadvantage of low accuracy and high false detection rate. To address these problems, this paper proposes a novel network intrusion detection scheme based on an improved bi-directional long short-term memory (Bi-LSTM) model under the emerging internet of things (IoT) environment. Firstly, this paper analyzes Bi-LSTM model. Then, it introduces a two-layer attention network structure into Bi-LSTM network. Finally, the corresponding network intrusion detection system is constructed based on the improved Bi STM model. Through simulation experiments, the proposed network intrusion detection method and other three methods are compared under five identical databases. Experimental results show that the false detection rate and detection accuracy of the proposed method are optimal on all sample data, the detection accuracy reaches 97.24% and the false detection rate drops to 5.13%.
Publisher
IGI Global
Subject
General Computer Science
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