Title :
Model-Based Thermal Anomaly Detection in Cloud Datacenters
Author :
Eun Kyung Lee ; Viswanathan, Harish ; Pompili, Dario
Abstract :
The growing importance, large scale, and high server density of high-performance computing datacenters make them prone to strategic attacks, misconfigurations, and failures (cooling as well as computing infrastructure). Such unexpected events lead to thermal anomalies - hotspots, fugues, and coldspots - which significantly impact the total cost of operation of datacenters. A model-based thermal anomaly detection mechanism, which compares expected (obtained using heat generation and extraction models) and observed thermal maps (obtained using thermal cameras) of datacenters is proposed. In addition, a Thermal Anomaly-aware Resource Allocation (TARA) scheme is designed to create time-varying thermal fingerprints of the datacenter so to maximize the accuracy and minimize the latency of the aforementioned model-based detection. TARA significantly improves the performance of model-based anomaly detection compared to state-of-the-art resource allocation schemes.
Keywords :
cameras; cloud computing; computer centres; resource allocation; security of data; temperature sensors; TARA; coldspot; cooling; extraction model; fugues; heat generation; high-performance cloud computing datacenter; model-based thermal anomaly detection; thermal anomaly-aware resource allocation; thermal camera; thermal map; time-varying thermal fingerprint; Cooling; Heating; Optimization; Resource management; Servers; Temperature sensors; Anomaly detection; heat imbalance; virtualization;
Conference_Titel :
Distributed Computing in Sensor Systems (DCOSS), 2013 IEEE International Conference on
Conference_Location :
Cambridge, MA
Print_ISBN :
978-1-4799-0206-4
DOI :
10.1109/DCOSS.2013.8