基于不变关系的分布式系统故障检测与定位

Abhishek B. Sharma, Haifeng Chen, Min Ding, K. Yoshihira, Guofei Jiang
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引用次数: 49

摘要

传感和通信技术的最新进展使我们能够从广泛的分布式系统(包括数据中心、制造工厂、运输网络、汽车等)收集全天候监控数据。通常,这些数据是以时间序列的形式从多个传感器(基于硬件和基于软件)收集的。在此之前,我们开发了一种基于时不变关系的方法,该方法使用带有外生输入(ARX)的自回归模型来建模该数据。基于该方法的工具已被用于分布式系统的故障检测和容量规划。在本文中,我们首先描述了在实际环境中应用该工具的经验。我们还讨论了在使用我们的工具时所面临的故障定位挑战,并提出了两种方法——基于不变图的空间方法和基于预期的破坏不变模式的时间方法——我们开发了这两种方法来解决这个问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault detection and localization in distributed systems using invariant relationships
Recent advances in sensing and communication technologies enable us to collect round-the-clock monitoring data from a wide-array of distributed systems including data centers, manufacturing plants, transportation networks, automobiles, etc. Often this data is in the form of time series collected from multiple sensors (hardware as well as software based). Previously, we developed a time-invariant relationships based approach that uses Auto-Regressive models with eXogenous input (ARX) to model this data. A tool based on our approach has been effective for fault detection and capacity planning in distributed systems. In this paper, we first describe our experience in applying this tool in real-world settings. We also discuss the challenges in fault localization that we face when using our tool, and present two approaches - a spatial approach based on invariant graphs and a temporal approach based on expected broken invariant patterns - that we developed to address this problem.
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