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云计算环境下关联节点的异常判断
引用本文:雷阳,姜瑛.云计算环境下关联节点的异常判断[J].计算机科学,2021,48(1):295-300.
作者姓名:雷阳  姜瑛
作者单位:云南省计算机技术应用重点实验室 昆明 650500;昆明理工大学信息工程与自动化学院 昆明 650500
基金项目:云南省应用基础研究计划重点项目基金;国家自然科学基金
摘    要:当前,越来越多的用户选择将服务部署到云计算环境中.然而,云计算服务的多样性以及部署环境的动态性,会导致云计算节点出现异常.传统的节点异常检测方法只针对异常的单一节点,忽略了异常节点对关联节点的影响,从而造成异常传播和关联节点失效等问题.文中提出了一种云计算环境下关联节点的异常判断方法.首先,将Agent部署在各节点上,...

关 键 词:云计算环境  单一节点  关联节点  异常判断  标准互信息

Anomaly Judgment of Directly Associated Nodes Under Cloud Computing Environment
LEI Yang,JIANG Ying.Anomaly Judgment of Directly Associated Nodes Under Cloud Computing Environment[J].Computer Science,2021,48(1):295-300.
Authors:LEI Yang  JIANG Ying
Affiliation:(Yunnan Key Lab of Computer Technology Application,Kunming 650500,China;Faculty of Information Engineering and Automation,Kunming University of Science and Technology,Kunming 650500,China)
Abstract:Currently,more and more users deploy their services on cloud computing environment.Due to the services diversity and dynamic deployment,the anomalies will be occurred on nodes under cloud computing environment.The impact of anomaly nodes on associated nodes are usually neglected in the traditional node anomaly detection methods,which will result in anomaly propagation and nodes failure.In this paper,a method of anomaly judgment for directly associated nodes under cloud computing environment is proposed.At first,the Agent is deployed on each node and the running data of nodes are collected through the Agent at specific time intervals.The node relationship graph is established based on the relationship between the nodes.Secondly,the anomaly detection model is trained by the running data.Then the weights and comprehensive scores of the running data is calculated.The anomaly of the single node is judged by the sliding time window-based method.Finally,other nodes affected by the anomaly nodes are found through the normalized mutual information in the case of a single node anomaly.In this paper,the relevant experiments are carried out on the cloud computing platform.In order to simulate all kinds of anomaly situations,the anomaly conditions are injected during the experiment and the state of nodes under the injection anomaly is observed.The validity of single node and directly associated node of anomaly judgment method was verified by experiments.The experimental results showed that the accuracy and specificity of the method in this paper are better than other methods about single node anomaly judgment.Under the multi-node structure,the method of this paper could find the directly associated anomaly node with the higher accuracy and stability.
Keywords:Cloud computing environment  Single node  Directly associated nodes  Anomaly judgment  Normalized mutual information
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