深度入侵网:利用混合深度 TCN 和具有积分特征的 GRU 进行网络入侵检测的高效框架

IF 2.1 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Y. Alekya Rani, E. Sreenivasa Reddy
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引用次数: 0

摘要

近来,网络上发生了多起网络攻击事件,因此需要有必要的工具来检测网络入侵。此外,网络入侵检测系统已成为一种重要工具,它能够保护源数据免受所有恶意活动或威胁,并保护个人隐私的不安全性。此外,现有的许多研究工作都在探索网络入侵检测模型,但却无法根据统计特征有效地保护目标网络。所设计模型的一个主要问题是鲁棒性或通用性,当数据来自不同的分布时,鲁棒性或通用性能够控制工作性能。为了解决所有难题,我们引入了一种新的基于元启发式混合深度学习模型来检测入侵。最初,输入数据来自标准数据源。然后,对数据进行预处理,包括去除重复数据、替换 NAN 值和归一化。有了预处理数据的结果,就可以利用自动编码器来提取重要特征。为了进一步提高性能,它需要借助一种称为 IChOA 的改进黑猩猩优化算法来选择最佳特征。随后,最佳特征将被应用到新开发的混合深度学习模型中。该混合模型由深度时空卷积网络和门控递归单元构建而成,被称为 DINet,其中的超参数通过改进的 IChOA 算法进行调整,以获得最优解。最后,对所提出的检测模型进行了评估,并与之前的检测方法进行了比较。分析结果表明,所开发模型的准确率和精确度均达到了 97%。因此,增强型模型阐明了如何有效地检测恶意软件,从而显著提高数据传输的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep intrusion net: an efficient framework for network intrusion detection using hybrid deep TCN and GRU with integral features

Deep intrusion net: an efficient framework for network intrusion detection using hybrid deep TCN and GRU with integral features

In recent times, the several cyber attacks are occurred on the network and thus, essential tools are needed for detecting intrusion over the network. Moreover, the network intrusion detection systems become an important tool thus, it has the ability to safeguard the source data from all malicious activities or threats as well as protect the insecurity among individual privacy. Moreover, many existing research works are explored to detect the network intrusion model but it fails to protect the target network efficiently based on the statistical features. A major issue in the designed model is regarded as the robustness or generalization that has the capability to control the working performance when the data is attained from various distributions. To handle all the difficulties, a new meta-heuristic hybrid-based deep learning model is introduced to detect the intrusion. Initially, the input data is garnered from the standard data sources. It is then undergone the pre-processing phase, which is accomplished through duplicate removal, replacing the NAN values, and normalization. With the resultant of pre-processed data, the auto encoder is utilized for extracting the significant features. To further improve the performance, it requires choosing the optimal features with the help of an Improved chimp optimization algorithm known as IChOA. Subsequently, the optimal features are subjected to the newly developed hybrid deep learning model. The hybrid model is built by incorporating the deep temporal convolution network and gated recurrent unit, and it is termed as DINet, in which the hyper parameters are tuned by an improved IChOA algorithm for attaining optimal solutions. Finally, the proposed detection model is evaluated and compared with the former detection approaches. The analysis shows the developed model is suggested to provide 97% in terms of accuracy and precision. Thus, the enhanced model elucidates that to effectively detect malware, which tends to improve data transmission significantly and securely.

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来源期刊
Wireless Networks
Wireless Networks 工程技术-电信学
CiteScore
7.70
自引率
3.30%
发文量
314
审稿时长
5.5 months
期刊介绍: The wireless communication revolution is bringing fundamental changes to data networking, telecommunication, and is making integrated networks a reality. By freeing the user from the cord, personal communications networks, wireless LAN''s, mobile radio networks and cellular systems, harbor the promise of fully distributed mobile computing and communications, any time, anywhere. Focusing on the networking and user aspects of the field, Wireless Networks provides a global forum for archival value contributions documenting these fast growing areas of interest. The journal publishes refereed articles dealing with research, experience and management issues of wireless networks. Its aim is to allow the reader to benefit from experience, problems and solutions described.
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