基于人工免疫的分布式服务异常检测方法

Jinmin Li, Tao Li
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引用次数: 0

摘要

分布式服务是解决海量用户服务的有效途径。但是,服务的动态组合会导致服务的不确定性,而且服务的海量数据会导致服务异常检测的效率低下。这就增加了服务异常检测的难度。本文受人工免疫识别异常的生物学过程启发,提出了一种动态检测分布式服务异常的方法。首先,采用数值微分法检测异常源。其次,提出了DCA的思想,并通过融合调用次数和平均次数来计算危险区域;实现了动态检测分布式服务异常的目的。最后,通过实验验证了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The anomaly detection method based on artificial immune of distributed service
Distributed service is an effective way to solve the massive user services. However, the dynamic combination of services can lead to uncertainty in service, what' s more, a large number of service's massive data lead to inefficiency in anomaly detection of service. So it increases the difficulty of the service anomaly detection. This paper inspired by the biological processes of artificial immune recognizing abnormality and propose a method which dynamically detect distributed services abnormal. First of all, we detect abnormal source through numerical differentiation method. Secondly, we draw the ideological of DCA, and through fusion invoking times and average times to calculating danger zone. We achieve the goal of dynamically detecting distributed services abnormal. At last, the experiments verify the feasibility of the method.
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