Title
A veracity preserving model for synthesizing scalable electricity load profiles.
Abstract
Electricity users are the major players of the electric systems, and electricity consumption is growing at an extraordinary rate. The research on electricity consumption behaviors is becoming increasingly important to design and deployment of the electric systems. Unfortunately, electricity load profiles are difficult to acquire. Data synthesis is one of the best approaches to solving the lack of data, and the key is the model that preserves the real electricity consumption behaviors. In this paper, we propose a hierarchical multi-matrices Markov Chain (HMMC) model to synthesize scalable electricity load profiles that preserve the real consumption behavior on three time scales: per day, per week, and per year. To promote the research on the electricity consumption behavior, we use the HMMC approach to model two distinctive raw electricity load profiles. One is collected from the resident sector, and the other is collected from the non-resident sectors, including different industries such as education, finance, and manufacturing. The experiments show our model performs much better than the classical Markov Chain model. We publish two trained models online, and researchers can directly use these trained models to synthesize scalable electricity load profiles for further researches.
Year
Venue
Field
2018
arXiv: Other Computer Science
Publication,Software deployment,Industrial engineering,Computer science,Electricity,Markov chain,Theoretical computer science,Data synthesis,Scalability
DocType
Volume
Citations 
Journal
abs/1802.03500
0
PageRank 
References 
Authors
0.34
3
8
Name
Order
Citations
PageRank
Yunyou Huang123.46
Jianfeng Zhan201.69
Chunjie Luo343421.86
Lei Wang457746.85
Nana Wang502.37
Daoyi Zheng652.81
Fanda Fan711.71
Rui Ren8396.66