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Hidden Markov Model for hard-drive failure detection

机译:隐藏式马尔可夫模型用于硬盘故障检测

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This paper illustrates the use of Hidden Markov Model (HMM) to model hard disk failure. The reason we use HMM is because HMM is a formal foundation for making probabilistic models of linear sequence ‘labeling’ problem. We use the database provided by University of California, San Diego for detection of hard-drive failure. We have selected 24 attributes and obtain accuracy of about 90%. We compare machine-learning methods applied to a difficult real-world problem: predicting computer hard-drive failure using attributes monitored internally by individual drives. The problem is one of detecting rare events in a time series of noisy and non-parametrically distributed data. We develop a new algorithm HMM which is specifically designed for the low false-alarm case, and is shown to have promising performance. Other methods compared are support vector machines (SVMs), unsupervised clustering, and non-parametric statistical tests (rank-sum and reverse arrangements). The failure-prediction performance of the SVM, rank-sum and mi-NB algorithm is considerably better than the threshold method currently implemented in drives, while maintaining low false alarm rates [13]. Our results suggest that non-parametric statistical tests should be considered for learning problems involving detecting rare events.
机译:本文说明了如何使用隐马尔可夫模型(HMM)对硬盘故障进行建模。我们使用HMM的原因是因为HMM是制作线性序列“标签”问题概率模型的正式基础。我们使用加利福尼亚大学圣地亚哥分校提供的数据库来检测硬盘故障。我们选择了24个属性,并获得了大约90%的准确性。我们比较了应用于一个实际难题的机器学习方法:使用单个驱动器内部监视的属性预测计算机硬盘驱动器故障。问题是在嘈杂且非参数分布的数据的时间序列中检测稀有事件之一。我们开发了一种新算法HMM,该算法专为低虚假警报情况而设计,并被证明具有良好的性能。比较的其他方法是支持向量机(SVM),无监督聚类和非参数统计检验(秩和和反向排列)。 SVM,秩和和mi-NB算法的故障预测性能明显优于驱动器中当前采用的阈值方法,同时保持较低的误报率[13]。我们的结果表明,对于涉及检测稀有事件的学习问题,应考虑使用非参数统计检验。

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