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Big data storage optimization and parallel processing technology for power equipment surveillance under cloud platform

机译:云平台下电力设备监控的大数据存储优化与并行处理技术

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摘要

This paper describes how to strengthen the management capacity of power equipment surveillance system for big data. Here is the ODPS list storage for partial discharge data of transformer proposed against the limitation of self-built Hadoop storage system. According to analysis of results, it is confirmed that this method can make a lot of storage space available and improve system performance. In relation to Hadoop distributed file system, HBase, ODPS, it has been proven to be highly reliable.
机译:本文介绍了如何加强电力设备监控系统的大数据管理能力。以下是用于抵御自动Hadoop存储系统的局限性的变压器的局部放电数据的ODPS列表存储。根据结果​​分析,确认该方法可以提供大量存储空间,并提高系统性能。关于Hadoop分布式文件系统,HBase,ODPS,已被证明是高度可靠的。

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