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A Novel Unsupervised Dead-value Detection Method for Monitoring Indicators in Data Center

机译:一种新型无监督的死亡值检测方法,用于监控数据中心指标

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For equipment monitoring, monitoring data are continuously generated, and when the monitoring data remain constant abnormally, we believe that these are dead values. Dead values are common and dead value detection is critical to subsequent data driven intelligent analysis for equipment. However, there is no specify work to study the dead value detection problem, to the best of our knowledge. In addition, due to challenges such as confusing profiles of dead values, the huge amount of monitoring data, and nonstationarity, existing anomaly detection methods are invalid. In this paper, we propose an effective dead value detection method consisting of two steps: dead value scoring and dead value detecting. In our evaluation, we analyze the monitoring data of equipment in the data center, and summarize six representative monitoring indicators with dead values as dataset. The evaluation experiments indicate the proposed dead value detection method achieves an average F1 score of 0.93, significantly outperforming the best performing baseline detection approaches by 117.5% on average.
机译:对于设备监控,持续生成监控数据,当监控数据异常保持恒定时,我们认为这些是死亡值。死亡值是常见的,死亡值检测对于后续数据驱动的设备的智能分析至关重要。但是,据我们所知,没有指定研究死亡值检测问题。此外,由于诸如死亡值的令人困惑的挑战,巨大的监测数据和非间抗性检测方法是无效的。在本文中,我们提出了一种有效的死亡值检测方法,包括两个步骤:死亡值评分和死亡值检测。在我们的评估中,我们分析了数据中心中设备的监控数据,并总结了六种具有死亡值的代表监测指标作为数据集。评估实验表明,所提出的死亡值检测方法平均F1得分为0.93,平均明显优于最佳性能的基线检测方法117.5%。

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