Short-term load forecasting for non-residential buildings contrasting artificial occupancy attributes

被引:45
作者
Massana, Joaquim [1 ]
Pous, Carles [1 ]
Burgas, Llorenc [1 ]
Melendez, Joaquim [1 ]
Colomer, Joan [1 ]
机构
[1] Univ Girona, Campus Montilivi,P4 Bldg, E-17071 Girona, Spain
关键词
Load forecasting; Support vector machines; Sensor data; Mediterranean climate; Occupancy indicator; ENERGY-CONSUMPTION; NEURAL-NETWORKS; MODEL; BEHAVIOR; SYSTEM; SIMULATION;
D O I
10.1016/j.enbuild.2016.08.081
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
An accurate short-term load forecasting system allows an optimum daily operation of the power system and a suitable process of decision-making, such as with regard to control measures, resource planning or initial investment, to be achieved. In a previous work, the authors demonstrated that an SVR model to forecast the electric load in a non-residential building using only the temperature and occupancy of the building as attributes is the one that gives the best balance of accuracy and computational cost for the cases under study. Starting from this conclusion, a simple, low-computational requirements and economical hourly consumption prediction method, based on SVR model and only the calculated occupancy indicator as attribute, is proposed. The method, unlike the others, is able to perform hourly predictions months in advance using only the occupancy indicator. Due to the relevance of the occupancy indicator in the model, this paper provides a complete study of the methods and data sources employed in the creation of the artificial occupancy attributes. Several occupancy indicators are defined, from the simplest one, using general information, to the most complex one, based on very detailed information. Then, a load forecasting performance discrimination between the artificial occupancy attributes is realized demonstrating that using the most complex indicator increases the workload and complexity while not improving the load prediction significantly. A real case study, applying the forecasting method to several non-residential buildings in the University of Girona, serve as a demonstration. (C) 2016 Elsevier B.V. All rights reserved.
引用
收藏
页码:519 / 531
页数:13
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