会议专题

Probabilistic Graphical Model Based Residential Energy Behavioral Analysis on Hybrid Computing Platform

  The accurate customers energy behavioral can be analyzed from large amount of data acquired by smart meters. Practically, an ideal analysis system should meet two kinds of data demand: fast with low accuracy and slow with high accuracy. In this paper, a hybrid computing platform to process large amount of real-time data is proposed to analyze customers energy behavioral. The structure and function of the platform is introduced. A graphical model based power consumption characteristics analysis algorithm is proposed. The implementation of the algorithm on hybrid computing platform is introduced. With energy usage data, four characteristics of resident energy consumption models are clustered. The experimental results show that the proposed algorithm can improve the efficiency of mass data clustering analysis and also proves the feasibility of the model.

hybrid computing energy consumption behavior big data probabilistic graphical model mapreduce

JIANGPENG DAI BO CHAI HONGBIN QIU BO ZHANG AND WEI JIANG

Institute of Computing Technology and Applications,Global Energy Interconnection Research Institute Department of Electrical Engineering,Southeast University

国际会议

2016中国国际供电会议(CICED2016)

西安

英文

1-4

2016-09-01(万方平台首次上网日期,不代表论文的发表时间)