WLI Fuzzy Clustering and Adaptive Lion Neural Network (ALNN) for Cloud Intrusion Detection

Pinki Sharma, J. Sengupta, P. K. Suri
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Abstract

Cloud computing is the internet-based technique where the users utilize the online resources for computing services. The attacks or intrusion into the cloud service is the major issue in the cloud environment since it degrades performance. In this article, we propose an adaptive lion-based neural network (ALNN) to detect the intrusion behaviour. Initially, the cloud network has generated the clusters using a WLI fuzzy clustering mechanism. This mechanism obtains the different numbers of clusters in which the data objects are grouped together. Then, the clustered data is fed into the newly designed adaptive lion-based neural network. The proposed method is developed by the combination of Levenberg-Marquardt algorithm of neural network and adaptive lion algorithm where female lions are used to update the weight adaptively using lion optimization algorithm. Then, the proposed method is used to detect the malicious activity through training process. Thus, the different clustered data is given to the proposed ALNN model. Once the data is trained, then it needs to be aggregated. Subsequently, the aggregated data is fed into the proposed ALNN method where the intrusion behaviour is detected. Finally, the simulation results of the proposed method and performance is analysed through accuracy, false positive rate, and true positive rate. Thus, the proposed ALNN algorithm attains 96.46% accuracy which ensures better detection performance.
基于WLI模糊聚类和自适应狮子神经网络的云入侵检测
云计算是一种基于互联网的技术,用户利用在线资源进行计算服务。对云服务的攻击或入侵是云环境中的主要问题,因为它会降低性能。在本文中,我们提出了一种基于自适应狮子的神经网络(ALNN)来检测入侵行为。最初,云网络使用WLI模糊聚类机制生成聚类。该机制获得数据对象分组在一起的不同数量的集群。然后,将聚类后的数据输入到新设计的自适应狮子神经网络中。该方法将神经网络中的Levenberg-Marquardt算法与自适应狮子算法相结合,利用狮子优化算法,利用母狮子自适应更新权重。然后,通过训练过程将该方法用于检测恶意活动。因此,将不同的聚类数据提供给所提出的神经网络模型。一旦对数据进行了训练,就需要对其进行聚合。随后,将聚合的数据输入到所提出的神经网络方法中,在该方法中检测入侵行为。最后,从准确率、假阳性率和真阳性率三个方面对所提方法的仿真结果和性能进行了分析。因此,本文提出的ALNN算法达到96.46%的准确率,保证了较好的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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