4.7 Article

Forecasting diurnal cooling energy load for institutional buildings using Artificial Neural Networks

Journal

ENERGY AND BUILDINGS
Volume 121, Issue -, Pages 284-297

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.enbuild.2015.12.050

Keywords

Forecasting models; Building energy; Institutional buildings; Artificial Neural Networks; Machine learning; Cooling load

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This study presents a methodology to forecast diurnal cooling load energy consumption for institutional buildings using data driven techniques. The cases for three institutional buildings are examined. A detailed analysis on their energy consumption data for two years shows that there is a high variation in diurnal energy consumption. This is largely attributed to the university scheduling and vacation periods. To reduce the degree of variation, the energy consumption data is divided into classes. These class numbers are then taken as inputs for the forecasting model which is developed using Artificial Neural Networks (ANN). The results show that the ANN is able to train and forecast the next day energy use based on five previous days' data with good accuracy. The model development, along with ANN architecture used in this case is discussed in detail. As a next step, the forecasted output is taken back as an input with a view to forecast the output of the following day. This step is repeated and the model exhibits an R-2 of more than 0.94 in forecasting the energy consumption for the next 20 days. It is also noted that such a methodology can be positively extended to other institutional buildings. (C) 2015 Elsevier B.V. All rights reserved.

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