2011
DOI: 10.1177/0954406211429764
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Thermal anomaly detection in datacenters

Abstract: The high density of servers in datacenters generates a large amount of heat, resulting in the high possibility of thermally anomalous events, i.e. computer room air conditioner fan failure, server fan failure, and workload misconfiguration. As such anomalous events increase the cost of maintaining computing and cooling components, they need to be detected, localized, and classified for taking appropriate remedial actions. In this article, a hierarchical neural network framework is proposed to detect small- (se… Show more

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Cited by 2 publications
(2 citation statements)
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“…On reading the article ‘Thermal anomaly detection in datacenters’ by Yuan et al. 1 in a recent issue of this journal, I have the following points to make. There is, in the paper, frequent reference to ‘temperature sensors’ and heavy reliance on the readings of such sensors in the discussion.…”
mentioning
confidence: 99%
“…On reading the article ‘Thermal anomaly detection in datacenters’ by Yuan et al. 1 in a recent issue of this journal, I have the following points to make. There is, in the paper, frequent reference to ‘temperature sensors’ and heavy reliance on the readings of such sensors in the discussion.…”
mentioning
confidence: 99%
“…In [40], researchers introduced a sophisticated two-tier hierarchical neural network framework that detected server-level as well as data centre-level thermal anomalies. The method was able to achieve this by studying the relationships of heterogeneous sensors and consequently outperform other machine learning models.…”
Section: Thermal Anomaly Detection In Data Centresmentioning
confidence: 99%