Intrusion Detection and Prevention system using Cuckoo search algorithm with ANN in Cloud Computing

Anushikha Gupta, Mala Kalra
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引用次数: 4

Abstract

The Security is a vital aspect of cloud service as it comprises of data that belong to multiple users. Cloud service providers are responsible for maintaining data integrity, confidentiality and availability. They must ensure that their infrastructure and data are protected from intruders. In this research work Intrusion Detection System is designed to detect malicious server by using Cuckoo Search (CS) along with Artificial Intelligence. CS is used for feature optimization with the help of fitness function, the server's nature is categorized into two types: normal and attackers. On the basis of extracted features, ANN classify the attackers which affect the networks in cloud environment. The main aim is to distinguish attacker servers that are affected by DoS/DDoS, Black and Gray hole attacks from the genuine servers. Thus, instead of passing data to attacker server, the server passes the data to the genuine servers and hence, the system is protected. To validate the performance of the system, QoS parameters such as PDR (Packet delivery rate), energy consumption rate and total delay before and after prevention algorithm are measured. When compared with existing work, the PDR and the delay have been enhanced by 3.0 %and 21.5 %.
云计算中基于布谷鸟搜索算法和人工神经网络的入侵检测与防御系统
安全性是云服务的一个重要方面,因为它包含属于多个用户的数据。云服务提供商负责维护数据的完整性、保密性和可用性。他们必须确保他们的基础设施和数据不受入侵者的侵害。本研究利用布谷鸟搜索(Cuckoo Search, CS)和人工智能技术,设计了入侵检测系统来检测恶意服务器。CS通过适应度函数进行特征优化,将服务器的性质分为正常和攻击两种。在提取特征的基础上,对云环境下影响网络的攻击者进行分类。主要目的是区分受到DoS/DDoS、黑洞和灰洞攻击的攻击服务器和真实服务器。因此,服务器不会将数据传递给攻击者服务器,而是将数据传递给正版服务器,从而保护了系统。为了验证系统的性能,测量了预防算法前后的PDR (Packet delivery rate)、能耗率、总时延等QoS参数。与现有工作相比,PDR和延迟分别提高了3.0%和21.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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