基于 I2ADO-DNN 加密技术的云系统入侵检测安全框架

Q1 Mathematics
M. N. Muneera, G. A. Selvi, V. Vaissnave, Gopal lal Rajora
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引用次数: 0

摘要

云计算的普及和成功与信息和通信技术(ICT)使用的改进直接相关。由于将数据和业务应用程序外包到云或第三方所引起的安全和隐私问题,采用云实施和服务变得至关重要。为了保护云网络的机密性和安全性,传统工作中开发了各种入侵检测系统框架。然而,目前的工作存在的主要问题是其冗长,入侵检测困难,过拟合,错误率高,虚警率高。因此,提出的研究试图基于云安全的密码学创建一个紧凑的IDS架构。在这里,平衡和规范化的数据集是使用z-score预处理过程产生的。然后使用智能装饰蜻蜓优化(IADO)选择增强入侵检测准确性的最佳属性。此外,使用间歇性深度神经网络(IDNN)分类模型将训练好的特征对正常和攻击数据进行分类。最后,采用可搜索加密(seable Encryption, SE)机制,确保云数据的安全性。在本研究中,利用各种参数进行了深入的分析,以验证所提出的I2ADO-DNN模型的入侵检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cryptographic based I2ADO-DNN Security Framework for Intrusion Detection in Cloud Systems
Cloud computing's popularity and success are directly related to improvements in the use of Information and Communication Technologies (ICT). The adoption of cloud implementation and services has become crucial due to security and privacy concerns raised by outsourcing data and business applications to the cloud or a third party. To protect the confidentiality and security of cloud networks, a variety of Intrusion Detection System (IDS) frameworks have been developed in the conventional works. However, the main issues with the current works are their lengthy nature, difficulty in intrusion detection, over-fitting, high error rate, and false alarm rates. As a result, the proposed study attempts to create a compact IDS architecture based on cryptography for cloud security. Here, the balanced and normalized dataset is produced using the z-score preprocessing procedure. The best attributes for enhancing intrusion detection accuracy are then selected using an Intelligent Adorn Dragonfly Optimization (IADO). In addition, the trained features are used to classify the normal and attacking data using an Intermittent Deep Neural Network (IDNN) classification model. Finally, the Searchable Encryption (SE) mechanism is applied to ensure the security of cloud data against intruders. In this study, a thorough analysis has been conducted utilizing various parameters to validate the intrusion detection performance of the proposed I2ADO-DNN model.
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来源期刊
CiteScore
4.10
自引率
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发文量
33
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