Detecting errors in the ATLAS TDAQ system: A neural networks and support vector machines approach

J. Sloper, E. Hines
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引用次数: 1

Abstract

This paper describes how neural networks and support vector machines can be used to detect errors in a large scale distributed system, specifically the ATLAS Trigger and Data AcQuisition (TDAQ) system. By collecting, analysing and preprocessing some of the data available in the system it is possible to recognize and/or predict error situations arising in the system. This can be done without detailed knowledge of the system, nor of the data available. Hence the presented methods could be used in similar system without significant changes. The TDAQ system, and in particular the main components related to this work, is described together with the test setup used. We simulate a number of error situations in the system and simultaneously gather both performance measures and error messages from the system. The data are then preprocessed and neural networks and support vector machines are applied to try to detect the error situations, achieving classification accuracy ranging from 88% to 100% for the neural networks and 90.8% to a 100% for the support vector machines approach.
ATLAS TDAQ系统中的错误检测:神经网络和支持向量机方法
本文描述了如何使用神经网络和支持向量机来检测大规模分布式系统中的错误,特别是ATLAS触发和数据采集(TDAQ)系统。通过收集、分析和预处理系统中可用的一些数据,可以识别和/或预测系统中出现的错误情况。这可以在没有系统详细知识或可用数据的情况下完成。因此,所提出的方法可以应用于类似的系统中,而不需要做很大的改变。TDAQ系统,特别是与这项工作相关的主要组件,以及所使用的测试设置进行了描述。我们模拟了系统中的许多错误情况,并同时从系统收集性能度量和错误消息。然后对数据进行预处理,并应用神经网络和支持向量机来检测错误情况,神经网络的分类准确率为88%至100%,支持向量机方法的分类准确率为90.8%至100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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