基于BP神经网络的入侵检测研究

Haonan Chen, Yiyang Liu, Jianming Zhao, Xianda Liu
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引用次数: 2

摘要

网络安全的目的是防止在互联网上传输的数据被窃取和篡改,确保数据的安全性。不仅要保证进出网络的信息不被窃取和篡改,而且要保证信息系统中信息的完整性和保密性。网络环境越来越复杂,攻击手段也越来越多样。因此,入侵检测系统普遍存在检测率低、虚警率高的问题,难以满足入侵检测系统的实时性要求。目前,深度学习在入侵检测中的应用越来越广泛。为了解决当前入侵检测系统中存在的问题,本文研究了深度学习在入侵检测中的应用。首先对BP神经网络(BP- nn)技术进行了分析,并针对目前BP- nn的不足提出了改进方法,最后进行了实证分析。实验结果表明,基于BP-NN的入侵检测准确率高,虚警率和虚警率均处于较低水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Intrusion Detection Based on BP Neural Network
The purpose of network security is to prevent the data transmitted over the Internet from being stolen and tampered with, and to ensure the security of the data. It is not only necessary to ensure that the information entering and exiting the network is not stolen or tampered with, but also to ensure the integrity and confidentiality of the information in the information system. The network environment is becoming more and more complex, and the attack methods are becoming more and more diverse. Therefore, intrusion detection systems have some common problems, such as low detection rate and high false alarm rate, and it is difficult to meet the real-time requirements of intrusion detection systems. Currently, deep learning is increasingly used in intrusion detection. In order to solve the problems existing in the current intrusion detection system, this paper studies the application of deep learning in intrusion detection. First, it analyzes the BP neural network (BP-NN) technology, and proposes an improvement method for the shortcomings of the current BP-NN, and finally conducts an empirical analysis. Experimental results show that intrusion detection based on BP-NN has a high accuracy rate, and the false alarm rate and false alarm rate are both at a low level.
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