满足变电设备监控多样化实时需求的混合云平台

Liuwang Wang, Yongli Zhu, Y. Jia
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引用次数: 0

摘要

智能电网的快速发展需要对智能变电站进行大量的投资。变电设备监测收集的数据增长非常快,大数据越来越明显。虽然现有的平台或框架都是为电力设备监控中的大数据处理而设计的,但它们都是基于Hadoop的,只适合离线数据分析。为了满足变电设备监控中大数据分析的多样化实时性需求,本文设计了一种基于主流开源技术的新型混合云平台。根据监控数据的特点和消费者的实时需求水平,在适当的资源限制下,使用合适的计算框架对数据进行处理。为了更深入地了解混合平台的有效性,在初步的基础上进行了不同场景的案例研究。
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A hybrid cloud platform for diversified real-time demand in transformation equipment monitoring
The rapid development of smart grid needs a lot of investment in smart substation. Data collected in monitoring of transformation equipments growing remarkably fast, big data becomes increasingly evident. Though existing platforms or frameworks were designed for processing big data in power equipments monitoring, they were all based on Hadoop which is only suitable for offline data analysis. In order to meet diversified real-time demand of big data analysis in transformation equipment monitoring, a novel hybrid cloud platform based on mainstream open source technologies is designed in this paper. According to characteristics of monitoring data and real-time demand level of consumer, data can be processed by suitable computing framework within appropriate resource limits. In order to provide more insights into the effectiveness of the hybrid platform, case studies in different scenarios are conducted on a preliminary one.
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