DETERMINATION OF THE ELECTRONIC ENERGY LEVELS OF A QUANTUM WELL HETEROSTRUTURE Zn(1-x) MgxO/ZnO/Zn1-xMgxO.

M. Thiam, A. Diaw, Amaky Badiane, O. A. Niasse, A. Diao, M. Diagne, L. O. Bassirou, B. Bassirou
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Abstract

Nowadays, Cloud Computing is the preferred choice of IT organizations as it provides dynamic and pay-per-use based services to its clients. The main problem of the cloud computing is security and privacy of data which occurs because of its open and distributed structural design. Thus, it becomes essential to design an intrusion detection system (IDS) to provide security to the system. IDS help to protect cloud ecosystem from the malicious activities of the attacker. In this research work, IDS is designed to detect malicious node by using an optimization technique along with the concept of AI (Artificial Intelligence).The Cuckoo Search (CS) algorithm is used as an optimization technique and it is a meta-heuristic approach which is inspired by the behavior of birds and CS algorithm operates on the healthiness function. After the feature optimization, different types of feature are categorized based on the node’s nature into two types namely normal and attackers. On the basis of extracted features, train the proposed system using ANN (artificial neural network) as classifier to classify the attackers which affect the networks in cloud environment. ANN is a multiclass classifier which is used to solve multi-class problems and due to this reason ANN is used in proposed work with CS optimization algorithm. In this research work, ANN is used to distinguish between attacker nodes and genuine nodes based on their optimized feature sets. Thus, instead of passing data to the attacker node, the node passes the data to the genuine node and hence, the system is protected. By using the above motioned concept in cloud computing the possibility of results improvement become high because only genuine node involving in the data transmission process. To know the performance of the system, the QoS (Quality of service) parameters such as PDR (Packet delivery ratio), energy consumption rate and total delay with and without prevention algorithm are measured. The development of proposed ARS is done in the MATLAB 2016a software with the help of various toolboxes like data acquisition, artificial intelligence, optimization and curve fitting.
量子阱异质结构Zn(1-x) MgxO/ZnO/Zn1-xMgxO电子能级的测定。
如今,云计算是IT组织的首选,因为它为其客户提供动态的、按使用付费的服务。云计算的主要问题是由于其开放和分布式的结构设计而产生的数据的安全性和隐私性问题。因此,设计一个入侵检测系统(IDS)来保证系统的安全性就变得至关重要。IDS有助于保护云生态系统免受攻击者恶意活动的侵害。在本研究中,IDS结合AI(人工智能)的概念,采用优化技术来检测恶意节点。布谷鸟搜索(Cuckoo Search, CS)算法是一种受鸟类行为启发的元启发式优化方法,CS算法对健康函数进行操作。特征优化后,根据节点的性质将不同类型的特征分为正常和攻击两类。在提取特征的基础上,利用人工神经网络作为分类器对系统进行训练,对云环境下影响网络的攻击者进行分类。人工神经网络是一种用于解决多类问题的多类分类器,正因为如此,本文将人工神经网络与CS优化算法结合使用。在本研究中,利用人工神经网络根据攻击节点和真实节点的优化特征集来区分攻击节点和真实节点。因此,该节点不会将数据传递给攻击者节点,而是将数据传递给正版节点,从而保护了系统。通过在云计算中使用上述概念,由于只有真正的节点参与数据传输过程,因此结果改进的可能性很高。为了了解系统的性能,我们测量了QoS (Quality of service)参数,如PDR (Packet delivery ratio)、能耗率、总时延等。本文在MATLAB 2016a软件中,借助数据采集、人工智能、优化和曲线拟合等多种工具箱完成了ARS的开发。
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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