基于深度学习技术的云基础设施入侵检测系统

Dharani Kumar Talapula, Adarsh Kumar, Kiran Kumar Ravulakollu, Manoj Kumar
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引用次数: 0

摘要

为了更好地利用计算基础设施,将计算机资源与服务和技术一起出售的商业策略之一是云计算(CC)。如今,每家IT公司都更喜欢云计算,因为它为消费者提供了灵活的按使用付费服务。由于其开放和分布式的结构,容易受到攻击者的攻击,因此,隐私和安全是其可持续性的关键障碍。检测对云的攻击的最普遍的方法是入侵检测系统(IDS)。本文旨在提出一种新的云计算入侵模式检测系统(IPDS),该系统包括三个阶段:(1)预处理,(2)特征提取,(3)分类。首先通过Z-score归一化对输入数据进行预处理,然后结合统计特征和高阶统计特征进行特征提取。随后,将提取的特征分配到使用优化量子神经网络(QNN)分类器的分类阶段。通过三次混沌映射集成猫鼠优化算法(CC-CMBO)对隐神经元进行优化,使分类更加准确。最后,将建议的工作结果与标准系统的结果进行了评估,并考虑了各种措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel intrusion detection system in cloud infrastructure using deep learning technique
One of the business strategies for selling computer resources with services and technology for better use of computing infrastructures is Cloud computing (CC). Nowadays, every IT company prefers cloud computing because it provides consumers with flexible, pay-per-use services. Due to its open and distributed structure, which is susceptible to attackers, thereby, privacy and security is a key obstacle to its sustainability. The most prevalent approach for detecting assaults on the cloud is known to be Intrusion Detection System (IDS). This article aims to propose a novel intrusion pattern detection system (IPDS) in cloud computing that includes three stages: (1) pre-processing, (2) feature extraction, and (3) classification. At first, pre-processing is performed on the input data via Z-score normalization and then feature extraction is performed along with statistical and higher-order statistical features. Subsequently, the extracted features are given to the classification phases that use the Optimized Quantum Neural Network (QNN) classifier. The hidden neuron optimization is performed by Cubic Chaotic Map integrated Cat and Mouse Based Optimization (CC-CMBO) Algorithm to make the classification more exact. Finally, the results of the proposed work are assessed to those of standard systems with respect to various measures.
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