A High-Performance Data Accessing and Processing System for Campus Real-time Power Usage

Sheng-Cang Chou, Chao-Tung Yang
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引用次数: 2

Abstract

With the flourishing of Internet of Things (IoT) technology, ubiquitous power data can be linked to the Internet and be analyzed for real-time monitoring requirements. Numerous power data would be accumulated to even Tera-byte level as the time goes. To approach a real-time power monitoring platform on them, an efficient and novel implementation techniques has been developed and formed to be the kernel material of this thesis. Based on the integration of multiple software subsystems in a layered manner, the proposed power-monitoring platform has been established and is composed of Ubuntu (as operating system), Hadoop (as storage subsystem), Hive (as data warehouse), and the Spark MLlib (as data analytics) from bottom to top. The generic power-data source is provided by the so-called smart meters equipped inside factories located in an enterprise practically. The data collection and storage are handled by the Hadoop subsystem and the data ingestion to Hive data warehouse is conducted by the Spark unit. On the aspect of system verification, under single-record query, these software modules: HiveQL and Impala SQL had been tested in terms of query-response efficiency. And for the performance exploration on the full-table query function. The relevant experiments have been conducted on the same software modules as well. The kernel contributions of this research work can be highlighted by two parts: the details of building an efficient real-time power-monitoring platform, and the relevant query-response efficiency for reference.
面向校园实时用电的高性能数据访问与处理系统
随着物联网(IoT)技术的蓬勃发展,无处不在的电力数据可以连接到互联网并进行分析,以满足实时监控需求。随着时间的推移,大量的电源数据将积累到甚至太字节级别。为了实现一个基于它们的实时电力监测平台,我们开发并形成了一种高效新颖的实现技术,这是本文的核心材料。基于多个软件子系统的分层集成,构建了本文提出的电力监控平台,该平台从下到上依次由Ubuntu(操作系统)、Hadoop(存储子系统)、Hive(数据仓库)、Spark MLlib(数据分析)组成。通用的电力数据源实际上是由企业内部工厂内配备的所谓智能电表提供的。数据采集和存储由Hadoop子系统处理,数据摄取到Hive数据仓库由Spark单元完成。在系统验证方面,在单记录查询下,对HiveQL和Impala SQL这两个软件模块进行了查询-响应效率测试。并对全表查询函数的性能进行了探讨。在相同的软件模块上也进行了相应的实验。本研究工作的核心贡献可以通过两部分来突出:构建高效的实时电力监控平台的细节,以及相关的查询-响应效率参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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