TY - JOUR
T1 - Priori information and sliding window based prediction algorithm for energy-efficient storage systems in cloud
AU - Du, Zhihui
AU - Fan, Wenjun
AU - Chai, Yunpeng
AU - Chen, Yinong
PY - 2013
Y1 - 2013
N2 - One of the major challenges in cloud computing and data centers is the energy conservation and emission reduction. Accurate prediction algorithms are essential for building energy efficient storage systems in cloud computing. In this paper, we first propose a Three-State Disk Model (3SDM), which can describe the service quality and energy consumption states of a storage system accurately. Based on this model, we develop a method for achieving energy conservation without losing quality by skewing the workload among the disks to transmit the disk states of a storage system. The efficiency of this method is highly dependent on the accuracy of the information predicting the blocks to be accessed and the blocks not be accessed in the near future. We develop a priori information and sliding window based prediction (PISWP) algorithm by taking advantage of the priori information about human behavior and selecting suitable size of sliding window. The PISWP method targets at streaming media applications, but we also check its efficiency on other two applications, news in webpage and new tool released. Disksim, an established storage system simulator, is applied in our experiments to verify the effect of our method for various users' traces. The results show that this prediction method can bring a high degree energy saving for storage systems in cloud computing environment.
AB - One of the major challenges in cloud computing and data centers is the energy conservation and emission reduction. Accurate prediction algorithms are essential for building energy efficient storage systems in cloud computing. In this paper, we first propose a Three-State Disk Model (3SDM), which can describe the service quality and energy consumption states of a storage system accurately. Based on this model, we develop a method for achieving energy conservation without losing quality by skewing the workload among the disks to transmit the disk states of a storage system. The efficiency of this method is highly dependent on the accuracy of the information predicting the blocks to be accessed and the blocks not be accessed in the near future. We develop a priori information and sliding window based prediction (PISWP) algorithm by taking advantage of the priori information about human behavior and selecting suitable size of sliding window. The PISWP method targets at streaming media applications, but we also check its efficiency on other two applications, news in webpage and new tool released. Disksim, an established storage system simulator, is applied in our experiments to verify the effect of our method for various users' traces. The results show that this prediction method can bring a high degree energy saving for storage systems in cloud computing environment.
KW - Conventional disk
KW - Energy conservation
KW - Energy-efficient cloud computing
KW - Prediction algorithm
UR - http://www.scopus.com/inward/record.url?scp=84885949031&partnerID=8YFLogxK
U2 - 10.1016/j.simpat.2013.06.002
DO - 10.1016/j.simpat.2013.06.002
M3 - Article
AN - SCOPUS:84885949031
SN - 1569-190X
VL - 39
SP - 3
EP - 19
JO - Simulation Modelling Practice and Theory
JF - Simulation Modelling Practice and Theory
ER -