Title of article
A new feature selection algorithm and composite neural network for electricity price forecasting
Author/Authors
Keynia، نويسنده , , Farshid، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
11
From page
1687
To page
1697
Abstract
In a competitive electricity market, the forecasting of energy prices is an important activity for all the market participants either for developing bidding strategies or for making investment decisions. In this paper, a new forecast strategy is proposed for day ahead prediction of electricity price, which is a complex signal with nonlinear, volatile and time dependent behavior. Our forecast strategy includes a new two stage feature selection algorithm, a composite neural network (CNN) and a few auxiliary predictors. The feature selection algorithm has two filtering stages to remove irrelevant and redundant candidate inputs, respectively. This algorithm is based on mutual information (MI) criterion and selects the input variables of the CNN among a large set of candidate inputs. The CNN is composed of a few neural networks (NN) with a new data flow among its building blocks. The CNN is the forecast engine of the proposed strategy. A kind of cross-validation technique is also presented to fine-tune the adjustable parameters of the feature selection algorithm and CNN. Moreover, the proposed price forecast strategy is equipped with a few auxiliary predictors to enrich the candidate set of inputs of the forecast engine. The whole proposed strategy is examined on the PJM, Spanish and Californian electricity markets and compared with some of the most recent price forecast methods.
Keywords
Two stage feature selection technique , Composite neural network , Price forecast
Journal title
Engineering Applications of Artificial Intelligence
Serial Year
2012
Journal title
Engineering Applications of Artificial Intelligence
Record number
2125757
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