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Exploring Time and Frequency Domains for Accurate and Automated Anomaly Detection in Cloud Computing Systems

机译:探索时域和频域,以在云计算系统中进行准确和自动的异常检测

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Cloud computing has become increasingly popular by obviating the need for users to own and maintain complex computing infrastructures. However, due to their inherent complexity and large scale, production cloud computing systems are prone to various runtime problems caused by hardware and software faults and environmental factors. Autonomic anomaly detection is crucial for understanding emergent, cloud-wide phenomena and self-managing cloud resources for system-level dependability assurance. To detect anomalous cloud behaviors, we need to monitor the cloud execution and collect runtime cloud performance data. For different types of failures, the data display different correlations with the performance metrics. In this paper, we present a wavelet-based multi-scale anomaly identification mechanism, that can analyze profiled cloud performance metrics in both time and frequency domains and identify anomalous cloud behaviors. Learning technologies are exploited to adapt the selection of mother wavelets and a sliding detection window is employed to handle cloud dynamicity and improve anomaly detection accuracy. We have implemented a prototype of the anomaly identification system and conducted experiments on an on-campus cloud computing environment. Experimental results show the proposed mechanism can achieve 93.3% detection sensitivity while keeping the false positive rate as low as 6.1% while outperforming other tested anomaly detection schemes.
机译:通过消除用户拥有和维护复杂的计算基础架构的需求,云计算已变得越来越流行。但是,由于其固有的复杂性和规模,生产云计算系统易于出现由硬件和软件故障以及环境因素引起的各种运行时问题。自主异常检测对于了解紧急情况,云范围内的现象以及自我管理云资源以确保系统级的可靠性至关重要。为了检测异常的云行为,我们需要监视云执行并收集运行时云性能数据。对于不同类型的故障,数据显示与性能指标的不同关联。在本文中,我们提出了一种基于小波的多尺度异常识别机制,该机制可以分析时域和频域中的剖析云性能指标并识别异常云行为。利用学习技术来适应母小波的选择,并采用滑动检测窗口来处理云动态并提高异常检测精度。我们已经实现了异常识别系统的原型,并在校园内的云计算环境上进行了实验。实验结果表明,所提出的机制可以达到93.3%的检测灵敏度,同时将误报率保持在6.1%的低水平,并且优于其他经过测试的异常检测方案。

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