Abstract:
In the framework of a competitive commercial
world, having accurate energy forecasting tools becomes a Key
Performance Indicator (KPI) to the building owners. Energy
forecasting plays a crucial role for any building when it
undergoes the retrofitting works in order to maximize the
benefits and utilities. This paper provides accurate and efficient
energy forecasting tool based on Support Vector Machine
Regression (SVMR). Results and discussions from real-world
case studies of commercial buildings of Colombo, Sri Lanka are
presented. In the case study, four commercial buildings are
randomly selected and the models are developed and tested using
monthly landlord utility bills. Careful analysis of available data
reveals the most influential parameters to the model and these
are as follows: mean outdoor dry-bulb temperature (T), solar
radiation (SR) and relative humidity (RH). Selection of the kernel
with radial basis function (RBF) is based on stepwise searching
method to investigate the performance of SVM with respect to
the three parameters such as C, γ and ε. The results showed that
the structure of the training set has significant effect to the
accuracy of the prediction. The analysis of the experimental
results reveals that all the forecasting models give an acceptable
result for all four commercials buildings with low coefficient of
variance with a low percentage error.
Citation:
N. G. I. S. Samarawickrama, K. T. M. U. Hemapala and A. G. B. P. Jayasekara, "Support Vector Machine Regression for forecasting electricity demand for large commercial buildings by using kernel parameter and storage effect," 2016 Moratuwa Engineering Research Conference (MERCon), 2016, pp. 162-167, doi: 10.1109/MERCon.2016.7480133.