iReTADS: An Intelligent Real-Time Anomaly Detection System for Cloud Communications Using Temporal Data Summarization and Neural Network

G. S. Lalotra, Vinod Kumar, Abhishek Bhatt, Tianhua Chen, M. Mahmud
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引用次数: 6

Abstract

A new distributed environment at less financial expenditure on communication over the Internet is presented by cloud computing. In recent times, the increased number of users has made network traffic monitoring a difficult task. Although traffic monitoring and security problems are rising in parallel, there is a need to develop a new system for providing security and reducing network traffic. A new method, iReTADS, is proposed to reduce the network traffic using a data summarization technique and also provide network security through an effective real-time neural network. Although data summarization plays a significant role in data mining, still no real methods are present to assist the summary evaluation. Thus, it is a serious endeavor to present four metrics for data summarization with temporal features such as conciseness, information loss, interestingness, and intelligibility. In addition, a new metric time is also introduced for effective data summarization. Finally, a new neural network known as Modified Synergetic Neural Network (MSNN) on summarized datasets for detecting the real-time anomaly-behaved nodes in network and cloud is introduced. Experimental results reveal that the iReTADS can effectively monitor traffic and detect anomalies. It may further drive studies on controlling the outbreaks and controlling pandemics while studying medical datasets, which results in smart healthy cities.
基于时间数据汇总和神经网络的云通信智能实时异常检测系统
云计算提供了一种新的分布式环境,在互联网上的通信花费较少。近年来,随着用户数量的不断增加,网络流量监控成为一项艰巨的任务。虽然流量监控和安全问题正在并行上升,但有必要开发一种新的系统来提供安全和减少网络流量。提出了一种新的方法,iReTADS,利用数据汇总技术减少网络流量,并通过一个有效的实时神经网络提供网络安全性。虽然数据汇总在数据挖掘中起着重要的作用,但目前还没有真正的方法来辅助汇总评估。因此,提出具有简洁性、信息丢失、有趣性和可理解性等时间特征的数据摘要的四个度量标准是一项严肃的努力。此外,为了有效地进行数据汇总,还引入了新的度量时间。最后,介绍了一种基于汇总数据集的改进协同神经网络(MSNN),用于实时检测网络和云中的异常节点。实验结果表明,该系统能够有效地监测交通状况和检测异常。它可以进一步推动控制疫情和控制流行病的研究,同时研究医疗数据集,从而实现智能健康城市。
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