Extracting Interaction-Related Failure Indicators for Online Detection and Prediction of Content Failures

Luyi Li, Minyan Lu, Tingyang Gu
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引用次数: 5

Abstract

With the increasing complexity of software-intensive systems, software health management is proposed to assure their runtime dependability, in which online failure detection and prediction is one of the most significant components. Failure indicators are characteristics of internal states and behavior of a system which indicate potential failures. However, previous studies mostly focused on extracting failure indicators from network and hardware outside of a software system or operating system level, neglected the runtime dynamics on application level. Besides, most of these studies aimed at detecting and predicting performance-related failures. As a major category of software failures, content failures are often omitted. This paper proposes an experiment-based approach to extract interaction-related failure indicators on application level for content failures, composed of abnormal execution time of modules and abnormal interaction times between modules. Firstly, an experiment-based failure data generation method is proposed due to a lack of real-world failure data which can reflect the runtime states and behavior of a software system. Then a machine learning method is selected and applied on the failure dataset to construct classifiers for normal data and failure data, from which failure indicators are extracted. Finally, three open-source software were selected to show the validity of our extracting method and the effectiveness of the extracted failure indicators. Interaction-related failure indicators extracted by the proposed approach can be used for runtime failure detection and prediction of content failures, thus improving runtime dependability of complex software-intensive systems.
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用于在线检测和预测内容故障的交互相关故障指标提取
随着软件密集型系统的日益复杂,为了保证系统运行时的可靠性,提出了软件健康管理,而在线故障检测和预测是软件健康管理的重要组成部分之一。故障指示器是指示潜在故障的系统内部状态和行为的特征。然而,以往的研究大多侧重于从软件系统或操作系统层面之外的网络和硬件中提取故障指标,忽略了应用层的运行时动态。此外,这些研究大多旨在检测和预测与性能相关的故障。作为软件故障的主要类别,内容故障经常被忽略。本文提出了一种基于实验的内容故障应用层交互相关故障指标提取方法,包括模块异常执行时间和模块间异常交互次数。首先,针对缺乏能够反映软件系统运行状态和行为的真实故障数据的问题,提出了一种基于实验的故障数据生成方法。然后选择机器学习方法对故障数据集进行分类,分别对正常数据和故障数据进行分类,提取故障指标。最后,选取三个开源软件,验证了提取方法的有效性和提取的故障指标的有效性。该方法提取的交互相关故障指标可用于运行时故障检测和内容故障预测,从而提高复杂软件密集型系统的运行时可靠性。
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