云环境下时间序列数据异常检测算法研究

Weibin Guo, Lin Shi, Z. Wu
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引用次数: 0

摘要

云环境是一个大规模、分布式、复杂的系统。由于其功能层之间复杂的相互依赖和调用关系,云环境的高效运维成为一个主要问题。云环境下日常监控KPI数据的主要形式是时间序列数据。这些数据的预测与异常检测一直是国内外研究的两个热点。该算法具有较高的预测精度和较高的异常检测精度,可以帮助我们发现云环境中潜在的问题,及时停止损失,避免造成较大的损失。本文在前人相关研究成果的基础上,以云环境下的数据为研究对象,以提高数据的预测精度和异常检测精度为研究目标,提出了适合云环境下数据特征的高效准确的预测算法和异常检测算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on anomaly detection algorithm of time series data in cloud environment
Cloud environment is a large-scale, distributed and complex system. Due to the complex interdependence and call relationship between its functional layers, the efficient operation and maintenance of cloud environment has become a major problem. The main form of daily monitoring KPI data in cloud environment is time series data. The prediction and anomaly detection of these data have always been two hot spots at home and abroad. The algorithm with high prediction accuracy and high anomaly detection accuracy can help us find the potential problems in the cloud environment and stop the loss in time to avoid large losses. Based on the previous relevant research results, this paper takes the data in the cloud environment as the research object, and takes improving the prediction accuracy and anomaly detection accuracy of the data as the research goal, and puts forward efficient and accurate prediction algorithms and anomaly detection algorithms suitable for the data characteristics in the cloud environment.
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