A hybrid short-term load forecasting with a new input selection framework
This paper proposes a hybrid STLF (short-term load forecasting) framework with a new input selection method. BNN (Bayesian neural network) is used to forecast the load. A combination of the correlation analysis and ℓ2-norm selects the appropriate inputs to the individual BNNs. The correlation analysis calculates the correlation coefficients between the training inputs and output. The Euclidean distance with respect to a desired correlation coefficient is then calculated using the ℓ2-norm. The input sub-series with the minimum Euclidean norm is selected as the most correlated input and decomposed by a wavelet transform to provide the detailed load characteristics for BNN training. The sub-series whose Euclidean norms are closest to the minimum norm are further selected as the inputs for the individual BNNs. A weighted sum of the BNN outputs is used to forecast the load for a particular day. New England load data are used to evaluate the performance of the proposed input selection method. A comparison of the proposed STLF with the existing state-of-the-art forecasting techniques shows a significant improvement in the forecast accuracy.
Year of publication: |
2015
|
---|---|
Authors: | Ghofrani, M. ; Ghayekhloo, M. ; Arabali, A. ; Ghayekhloo, A. |
Published in: |
Energy. - Elsevier, ISSN 0360-5442. - Vol. 81.2015, C, p. 777-786
|
Publisher: |
Elsevier |
Subject: | Bayesian neural network | Correlation analysis | Input selection | Short-term load forecasting | Wavelet decomposition |
Saved in:
Saved in favorites
Similar items by subject
-
Liu, Da, (2014)
-
Pulido-Calvo, Inmaculada, (2012)
-
Verbeke, Wouter, (2012)
- More ...