Applied Sciences (Jun 2022)

<i>ASAD</i>: Adaptive Seasonality Anomaly Detection Algorithm under Intricate KPI Profiles

  • Hao Wang,
  • Yuanyuan Zhang,
  • Yijia Liu,
  • Fenglin Liu,
  • Hanyang Zhang,
  • Bin Xing,
  • Minghai Xing,
  • Qiong Wu,
  • Liangyin Chen

DOI
https://doi.org/10.3390/app12125855
Journal volume & issue
Vol. 12, no. 12
p. 5855

Abstract

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Anomaly detection is the foundation of intelligent operation and maintenance (O&M), and detection objects are evaluated by key performance indicators (KPIs). For almost all computer O&M systems, KPIs are usually the machine-level operating data. Moreover, these high-frequency KPIs show a non-Gaussian distribution and are hard to model, i.e., they are intricate KPI profiles. However, existing anomaly detection techniques are incapable of adapting to intricate KPI profiles. In order to enhance the performance under intricate KPI profiles, this study presents a seasonal adaptive KPI anomaly detection algorithm ASAD (Adaptive Seasonality Anomaly Detection). We also propose a new eBeats clustering algorithm and calendar-based correlation method to further reduce the detection time and error. Through experimental tests, our ASAD algorithm has the best overall performance compared to other KPI anomaly detection methods.

Keywords