Classification of daily electric load profiles of non-residential buildings

被引:34
作者
Bourdeau, Mathieu [1 ,2 ]
Basset, Philippe [2 ]
Beauchene, Solene [3 ,4 ]
Da Silva, David [6 ]
Guiot, Thierry [4 ,5 ]
Werner, David [1 ]
Nefzaoui, Elyes [2 ,4 ]
机构
[1] CAMEO SAS, 55 Rue Chateaudun, F-75009 Paris, France
[2] Univ Gustave Eiffel, CNRS, ESYCOM Lab, F-77454 Marne La Vallee, France
[3] EDF Lab Renardieres, EDF R&D, F-77818 Moret Sur Loing, France
[4] Efficacity, F-77447 Marne La Vallee 2, France
[5] Ctr Sci & Tech Batiment, Sophia Antipolis, France
[6] Engie Lab Future Bldg & Cities CRIGEN, F-93240 Stains, France
关键词
Clustering; Daily load profiles; Electric demand; Non-residential buildings; ENERGY; PREDICTION;
D O I
10.1016/j.enbuild.2020.110670
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
We investigated clustering techniques on time series of daily electric load profiles of fourteen higher education buildings on the same campus. A k-means algorithm is implemented, and three different methods are compared: time-series features extraction with Manhattan distance and raw time series with Euclidian distance and Dynamic Time Warping. The impact of data characteristics with data collection time-steps and timeframes is studied using a database of more than 6,500 daily electric load profiles. We show that Euclidian distance applied to electric demand time series with three-month timeframes and ten-minute time-step provides the most consistent clustering results. In addition, useful insights are highlighted for non-residential buildings electric demand modeling and forecasting. Two groups of buildings can be distinguished regarding electric load profile patterns. On one hand, teaching, research, libraries, and gymnasium buildings show similar patterns distributed in two clusters corresponding to business days and closing days load profiles. On the other hand, campus office buildings present a larger number of clusters inconsistent with day-type dependent load profiles. A seasonal effect is also observed using six-month and one-year timeframes. Finally, a two-cluster distribution is obtained when aggregating all buildings load profiles. (C) 2020 Elsevier B.V. All rights reserved.
引用
收藏
页数:16
相关论文
共 44 条
[31]  
R Foundation, The R Project for Statistical Computing
[32]   A pattern recognition methodology for analyzing residential customers load data and targeting demand response applications [J].
Rajabi, Amin ;
Eskandari, Mohsen ;
Ghadi, Mojtaba Jabbari ;
Ghavidel, Sahand ;
Li, Li ;
Zhang, Jiangfeng ;
Siano, Pierluigi .
ENERGY AND BUILDINGS, 2019, 203
[33]  
Räsänen T, 2009, LECT NOTES COMPUT SC, V5495, P401, DOI 10.1007/978-3-642-04921-7_41
[34]   Clustering analysis of residential electricity demand profiles [J].
Rhodes, Joshua D. ;
Cole, Wesley J. ;
Upshaw, Charles R. ;
Edgar, Thomas F. ;
Webber, Michael E. .
APPLIED ENERGY, 2014, 135 :461-471
[35]  
Richhard M-A, 2017, ACEEE Summer Study Energy Effic. Ind, P160
[36]   Cluster analysis and prediction of residential peak demand profiles using occupant activity data [J].
Satre-Meloy, Aven ;
Diakonova, Marina ;
Grunewald, Philipp .
APPLIED ENERGY, 2020, 260
[37]   Towards sustainable smart cities: A review of trends, architectures, components, and open challenges in smart cities [J].
Silva, Bhagya Nathali ;
Khan, Murad ;
Han, Kijun .
SUSTAINABLE CITIES AND SOCIETY, 2018, 38 :697-713
[38]  
Spertino F, 2015, 2015 IEEE 15TH INTERNATIONAL CONFERENCE ON ENVIRONMENT AND ELECTRICAL ENGINEERING (IEEE EEEIC 2015), P255, DOI 10.1109/EEEIC.2015.7165548
[39]   Shape-Based Approach to Household Electric Load Curve Clustering and Prediction [J].
Teeraratkul, Thanchanok ;
O'Neill, Daniel ;
Lall, Sanjay .
IEEE TRANSACTIONS ON SMART GRID, 2018, 9 (05) :5196-5206
[40]  
U.S. Energy Information Administration (EIA), 2018, MAN SMART MET AR INS