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Title
A new short-term load forecast method based on neuro-evolutionary algorithm and chaotic feature selection
Type of Research Article
Keywords
Short-term load forecast; Neural network; Chaotic time series; Feature selection; Reconstructed phase space; Differential Evolutionary
Abstract
In competitive environment of deregulated electricity market, short-term load forecasting (STLF) is a major discussion for efficient operation of power systems. Therefore, the area of electricity load forecasting is still essential need for more accurate and stable load forecast algorithm. However, the electricity load is a non-linear signal with high degree of volatility. In this paper, a new forecasted method based on neural network (NN) and chaotic intelligent feature selection is presented. The proposed feature selection method selects the best set of candidate input which is used as input data for the forecasted. The theory of phase space reconstruction under Taken’s embedding theorem is used to prepare candidate features. Then, candidate inputs relevance to target value are measured by using correlation analysis. Forecast engine is a multilayer perception layer (MLP) NN with hybrid Levenberg–Marquardt (LM) and Differential Evolutionary (DE) learning algorithm. The proposed STLF is tested on PJM and New England electricity markets and compared with some of recent STLF techniques.
Researchers Sajjad Kouhi (First Researcher)، Farshid Keynia (Second Researcher)، Sajad Najafi Ravadanegh (Third Researcher)