Cloud-Based Smart Energy Framework for Accelerated Data Analytics with Parallel Computing of Orchestrated Containers: Study Case of CU-BEMS

Kittipat Saengkaenpetch, C. Aswakul
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Abstract

This paper proposes a practical smart energy framework for data analytic on energy management system at Chulalongkorn University, called CU-BEMS. This serves as an example of demand-sided smart energy application that copes with the challenges of big data analytic and real-time processing needs. The framework is based on the divide and conquer paradigm to accelerate data analytics with parallel computing. The workload is containerized and deployed on the Kubernetes cloud facility of our internationally collaborated IoTcloudServe@TEIN playground. With this playground, the workload scalability and portability can be achieved. Applying the proposed framework, this paper reports on a practical data log analysis to determine the wasted energy consumption. Based on the experimental result, the wasted energy consumption of the whole data set of CU-BEMS's communication research laboratory area from March 2014 to August 2017 can be computed within 81 seconds by using 32 cores running in parallel. The framework is expected to serve as a basis template for further research ongoing at CU-BEMS and smart energy applications that can be computationally enhanced by data analytic pipelining with containerized services as orchestrated by Kubernetes.
协同容器并行计算加速数据分析的基于云的智能能源框架:CU-BEMS研究案例
本文提出了一个实用的智能能源框架,用于朱拉隆功大学能源管理系统的数据分析,称为CU-BEMS。这是应对大数据分析和实时处理需求挑战的需求侧智能能源应用的一个例子。该框架基于分而治之的范式,通过并行计算加速数据分析。工作负载被容器化并部署在我们国际合作的IoTcloudServe@TEIN游乐场的Kubernetes云设施上。有了这个平台,就可以实现工作负载的可伸缩性和可移植性。应用所提出的框架,本文报告了一个实际的数据日志分析,以确定浪费的能源消耗。基于实验结果,采用32核并行运行,可以在81秒内计算出CU-BEMS通信研究实验室区域2014年3月至2017年8月整个数据集的浪费能耗。该框架有望作为CU-BEMS和智能能源应用的进一步研究的基础模板,这些应用可以通过Kubernetes编排的容器化服务的数据分析流水线进行计算增强。
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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