Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6885733 | Journal of Systems and Software | 2014 | 14 Pages |
Abstract
The failure of Web applications often affects a large population of customers, and leads to severe economic loss. Anomaly detection is essential for improving the reliability of Web applications. Current approaches model correlations among metrics, and detect anomalies when the correlations are broken. However, dynamic workloads cause the metric correlations to change over time. Moreover, modeling various metric correlations are difficult in complex Web applications. This paper addresses these problems and proposes an online anomaly detection approach for Web applications. We present an incremental clustering algorithm for training workload patterns online, and employ the local outlier factor (LOF) in the recognized workload pattern to detect anomalies. In addition, we locate the anomalous metrics with the Student's t-test method. We evaluated our approach on a testbed running the TPC-W industry-standard benchmark. The experimental results show that our approach is able to (1) capture workload fluctuations accurately, (2) detect typical faults effectively and (3) has advantages over two contemporary ones in accuracy.
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Networks and Communications
Authors
Tao Wang, Jun Wei, Wenbo Zhang, Hua Zhong, Tao Huang,