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Can We Speculate Running Application With Server Power Consumption Trace?

Authors
Li, YuanlongHu, HanWen, YonggangZHANG, Jun
Issue Date
May-2018
Publisher
IEEE Advancing Technology for Humanity
Keywords
Long short term memory (LSTM); recurrent neural network (RNN); time series classification; time warping
Citation
IEEE Transactions on Cybernetics, v.48, no.5, pp 1500 - 1512
Pages
13
Indexed
SCI
SCIE
SCOPUS
Journal Title
IEEE Transactions on Cybernetics
Volume
48
Number
5
Start Page
1500
End Page
1512
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/116354
DOI
10.1109/TCYB.2017.2703941
ISSN
2168-2267
2168-2275
Abstract
In this paper, we propose to detect the running applications in a server by classifying the observed power consumption series for the purpose of data center energy consumption monitoring and analysis. Time series classification problem has been extensively studied with various distance measurements developed; also recently the deep learning-based sequence models have been proved to be promising. In this paper, we propose a novel distance measurement and build a time series classification algorithm hybridizing nearest neighbor and long short term memory (LSTM) neural network. More specifically, first we propose a new distance measurement termed as local time warping (LTW), which utilizes a user-specified index set for local warping, and is designed to be noncommutative and nondynamic programming. Second, we hybridize the 1-nearest neighbor (1NN)-LTW and LSTM together. In particular, we combine the prediction probability vector of 1NN-LTW and LSTM to determine the label of the test cases. Finally, using the power consumption data from a real data center, we show that the proposed LTW can improve the classification accuracy of dynamic time warping (DTW) from about 84% to 90%. Our experimental results prove that the proposed LTW is competitive on our data set compared with existed DTW variants and its noncommutative feature is indeed beneficial. We also test a linear version of LTW and find out that it can perform similar to state-of-the-art DTW-based method while it runs as fast as the linear runtime lower bound methods like LBKeogh for our problem. With the hybrid algorithm, for the power series classification task we achieve an accuracy up to about 93%. Our research can inspire more studies on time series distance measurement and the hybrid of the deep learning models with other traditional models. © 2013 IEEE.
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ERICA 공학대학 (SCHOOL OF ELECTRICAL ENGINEERING)
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