Analysis of the Application of Storage Resource Pool Technology of Inner Mongolia Power based on the Background of Big Data

Authors

  • Zhang Yu
  • Ao Wei

DOI:

https://doi.org/10.62051/ijepes.v2n1.04

Keywords:

Pooling of Storage Resources, Structured Data, Unstructured Data, Cloud Computing, Distributed Storage Systems, Disaster Recovery Center

Abstract

With the continuous deepening of the Inner Mongolia Power Company's level of informatization and the continuous expansion of the scale of business and application system construction, the company will also enter the era of big data, and the amount of data will show an explosive growth trend. In order to solve the problems of massive data storage and data value mining faced by the enterprise during its development process, research on the application of storage resource pool technology has been conducted. Ultimately, the unified planning, allocation, and management of storage resources have been achieved, greatly improving the utilization efficiency of storage resources.

References

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Zhang Xuejian. Research on performance optimization based on the status quo of storage resource pool in Yunnan power grid [J]. Information Communication, 2017(6):3-6.

Zhang Yu. Construction and Application Analysis of Disaster Recovery Center for Inner Mongolia Electric Power Information System[J]. Inner Mongolia Electric Power Technology, 2012(6):1-5.

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Xiao Kun. Massive Unstructured Information Processing in Big Data Environment [J]. Information Communication, 2016(8):167-169.

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Published

03-04-2024

Issue

Section

Articles

How to Cite

Yu, Z., & Wei, A. (2024). Analysis of the Application of Storage Resource Pool Technology of Inner Mongolia Power based on the Background of Big Data. International Journal of Electric Power and Energy Studies, 2(1), 34-38. https://doi.org/10.62051/ijepes.v2n1.04