Title :
A Strategy for Short-Term Load Forecasting by Support Vector Regression Machines
Author :
Ceperic, Ervin ; Ceperic, V. ; Baric, Adrijan
Author_Institution :
HEP d.d., Rijeka, Croatia
Abstract :
This paper presents a generic strategy for short-term load forecasting (STLF) based on the support vector regression machines (SVR). Two important improvements to the SVR based load forecasting method are introduced, i.e., procedure for generation of model inputs and subsequent model input selection using feature selection algorithms. One of the objectives of the proposed strategy is to reduce the operator interaction in the model-building procedure. The proposed use of feature selection algorithms for automatic model input selection and the use of the particle swarm global optimization based technique for the optimization of SVR hyper-parameters reduces the operator interaction. To confirm the effectiveness of the proposed modeling strategy, the model has been trained and tested on two publicly available and well-known load forecasting data sets and compared to the state-of-the-art STLF algorithms yielding improved accuracy.
Keywords :
load forecasting; particle swarm optimisation; power engineering computing; regression analysis; support vector machines; STLF algorithms; SVR based load forecasting method; SVR hyper-parameters optimization; automatic model input selection; data sets load forecasting; feature selection algorithms; model-building procedure; modeling strategy; operator interaction; particle swarm global optimization based technique; short-term load forecasting; subsequent model input selection; support vector regression machines; Accuracy; Data models; Load forecasting; Load modeling; Optimization; Predictive models; Support vector machines; Short-term load forecasting; support vector machines;
Journal_Title :
Power Systems, IEEE Transactions on
DOI :
10.1109/TPWRS.2013.2269803