An optimized cluster storage method for real-time big data in Internet of Things

被引:0
作者
Li Tu
Shuai Liu
Yan Wang
Chi Zhang
Ping Li
机构
[1] University of Electronic Science and Technology of China,College of Mechanical Electrical Engineering
[2] Zhongshan Institute,College of Computer Science
[3] Inner Mongolia University,School of Information and Electronic Engineering
[4] Hunan City University,undefined
[5] Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education,undefined
来源
The Journal of Supercomputing | 2020年 / 76卷
关键词
Internet of Things; Big data; Real time; Cluster storage; Optimization;
D O I
暂无
中图分类号
学科分类号
摘要
Data storage, especially big data storage, is a research hot spot in Internet of Things (IoT) system today. In traditional data storage methods, the fault-tolerant algorithm for data copies is adjusted with whole data file, which causes huge redundancy because there are less utilization and more cost of data storage when only a part of data blocks in the file are accessed. Therefore, an optimized cluster storage method for big data in IoT is proposed in this paper. First, weights of data blocks in each historical accessing period are calculated by temporal locality of data access, and the access frequencies of the data block in next period are predicted by the weights. Second, the hot spot of a data block is determined with a threshold which is calculated by previous data access. Meantime, in order to improve the data access efficiency and resource utilization, as well as to reduce the copy storage costs, copy of data block is dynamically adjusted and stored in different groups with high-performance and low-load nodes for data balance. Finally, experimental results show that the storage cost of proposed method is 70% less than that of traditional methods, which means that the proposed method effectively improves the data access speed, reduces storage space, and balances the storage load.
引用
收藏
页码:5175 / 5191
页数:16
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