基于pca的全网相关异常事件检测与诊断

Yuanxun Zhang, P. Calyam, S. Debroy, M. Sridharan
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引用次数: 7

摘要

支持大规模分布式计算应用的高性能计算环境需要来自perfSONAR等开放框架的多域网络性能测量。对于可能影响数据吞吐量性能的全网相关异常事件,需要快速准确地通知,以保证计算环境的平稳运行。由于网络拓扑并不总是与测量数据一起可用,因此识别和定位影响数据吞吐量性能的网络范围相关异常事件是一项挑战。本文提出了一种新的基于pca的相关异常事件检测方案,该方案可以融合多个时间序列的测量数据,并利用主成分分析对其进行变换。我们使用实际的perfSONAR单向延迟测量数据集证明,我们的方案可以:(a)有效区分相关和不相关异常,(b)利用源侧有利位置来诊断相关异常事件位置是本地还是外部域,(c)作为“黑箱”相关分析工具,为最终的根本原因识别提供关键见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PCA-based network-wide correlated anomaly event detection and diagnosis
High-performance computing environments supporting large-scale distributed computing applications need multi-domain network performance measurements from open frameworks such as perfSONAR. Network-wide correlated anomaly events that can potentially impact data throughput performance need to be quickly and accurately notified for smooth computing environment operations. Since network topology is not always available along with the measurements data, it is challenging to identify and locate network-wide correlated anomaly events that impact data throughput performance. In this paper, we present a novel PCA-based correlated anomaly event detection scheme that can fuse multiple time-series of measurements and transform them using principal component analysis. We demonstrate using actual perfSONAR one-way delay measurement datasets that our scheme can: (a) effectively distinguish between correlated and uncorrelated anomalies, (b) leverage a source-side vantage point to diagnose whether a correlated anomaly event location is local or in an external domain, (c) act as a “black-box” correlation analysis tool for key insights in eventual root-cause identification.
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