Dynamic decision-making strategy of replica number based on data hot

被引:0
作者
Qinlu He
Fan Zhang
Genqing Bian
Weiqi Zhang
Zhen Li
Chen Chen
机构
[1] Xi’an University of Architecture and Technology,School of Information and Control Engineering
[2] Shaan Xi Institute of Metrology Science,undefined
[3] The First Affiliated Hospital of Xi’an Jiaotong University,undefined
来源
The Journal of Supercomputing | 2023年 / 79卷
关键词
Cloud storage; Replica placement; Replica number dynamic decision;
D O I
暂无
中图分类号
学科分类号
摘要
As a fast-rising storage model in recent years, cloud storage has adopted a “pay-as-you-go” approach to provide users with highly reliable, highly available, low-cost, and secure storage services that have received widespread attention and use within enterprises and individuals. Data replica management technology, as an essential part of cloud storage systems, has irreplaceable advantages in improving cluster fault tolerance and availability, so it has become the focus of many experts and scholars. It replicates multiple data blocks and places them in various nodes in the cluster; this makes the data more secure and reliable and improves the access rate while ensuring system load balance. Data replica technology runs through the process from replica creation to consistency maintenance. Each part of it has an essential impact on the performance of the cloud storage system. This article focuses on the dynamic decision of the number of data replicas in the cloud storage system. Considering the shortcomings of the static replica strategy, a dynamic decision strategy for the number of replicas based on the popularity of the data is proposed. By using the gray prediction model GM (1, 1) to predict the future data access frequency and using the Markov model to modify the prediction result, the data can be divided into hot data and non-hot data according to the predicted value, thereby determining the data replica number. Finally, through simulation experiments, the experimental results of the static replica strategy and the data hot-based replica number dynamic decision strategy are compared and analyzed.
引用
收藏
页码:9584 / 9603
页数:19
相关论文
共 45 条
[1]  
Chang W(2019)Write-aware replica placement for cloud computing IEEE J Sel Areas Commun 37 656-667
[2]  
Wang P(2018)A decentralized replica placement algorithm for edge computing IEEE Trans Netw Serv Manage 15 516-529
[3]  
Aral A(2018)A genetic algorithm based data replica placement strategy for scientific applications in clouds IEEE Trans Serv Comput 11 727-739
[4]  
Ovatman T(2018)Multi-objective optimization for virtual machine allocation and replica placement in virtualized hadoop IEEE Trans Parallel Distrib Syst 29 2568-2581
[5]  
Cui L(2018)Research on optimization of HDFS dynamic copy factor Comput Technol Develop 28 68-72
[6]  
Zhang J(2015)A cloud computing data copy dynamic management strategy J Henan Norm Univ Nat Sci Edit 43 138-143
[7]  
Yue L(2015)Cloud-based hot data copy factor decision algorithm based on prediction Comput Mod 2 62-66
[8]  
Shi Y(2019)Research on population prediction based on grey prediction and radial basis network Comput Sci 46 431-435
[9]  
Li H(2016)Forecast of my country’s energy demand based on combined model Math Pract Theory 46 45-53
[10]  
Yuan D(2020)Anomaly prediction method of network traffic based on deep learning Comput Eng Appl 56 39-50