Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5482323 | Renewable and Sustainable Energy Reviews | 2017 | 19 Pages |
Abstract
Electricity load forecasting is an important tool which can be utilized to enable effective control of commercial building electricity loads. Accurate forecasts of commercial building electricity loads can bring significant environmental and economic benefits by reducing electricity use and peak demand and the corresponding GHG emissions. This paper presents a review of different electricity load forecasting models with a particular focus on regression models, discussing different applications, most commonly used regression variables and methods to improve the performance and accuracy of the models. A comparison between the models is then presented for forecasting day ahead hourly electricity loads using real building and Campus data obtained from the Kensington Campus and Tyree Energy Technologies Building (TETB) at the University of New South Wales (UNSW). The results reveal that Artificial Neural Networks with Bayesian Regulation Backpropagation have the best overall root mean squared and mean absolute percentage error performance and almost all the models performed better predicting the overall Campus load than the single building load. The models were also tested on forecasting daily peak electricity demand. For each model, the obtained error for daily peak demand forecasts was higher than the average day ahead hourly forecasts. The regression models which were the main focus of the study performed fairly well in comparison to other more advanced machine learning models.
Keywords
MLRDBTTDPMAPENARXTMYUNSWUniversity of New South WalesARIMASLRRMSEWWRMPEARMASVRANNRadj2auto regressiveRegression treesDew point temperatureDry bulb temperatureRelative humiditySupport vector regressionMultivariate linear regressionroot mean squared errorTypical meteorological yearSolar heat gainsArtificial Neural NetworkNeural networksadjusted coefficient of determinationcoefficient of determinationCoefficient of varianceSVMSupport vector machineMoving averageMean percentage errorPrismmean absolute percentage errorAuto regressive moving averageAuto regressive integrated moving averagewindow to wall ratioMachine learning
Related Topics
Physical Sciences and Engineering
Energy
Renewable Energy, Sustainability and the Environment
Authors
B. Yildiz, J.I. Bilbao, A.B. Sproul,