DocumentCode :
2378871
Title :
Sensitivity Analysis of Similar Days Parameters for Predicting Short-Term Electricity Price
Author :
Mandal, Paras ; Senjyu, Tomonobu ; Yona, Atsushi ; Park, Jung-Wook ; Srivastava, Anurag K.
Author_Institution :
Yonsei Univ., Seoul
fYear :
2007
fDate :
Sept. 30 2007-Oct. 2 2007
Firstpage :
568
Lastpage :
574
Abstract :
This paper describes an identification of the best similar days parameters for artificial neural network (ANN) based short-term price forecasting. The work presented in this paper is an extended version of our previous works where we proposed the price prediction technique by using ANN, which is based on similar days method. According to similar days method, we select similar price days corresponding to forecast day based on Euclidean norm. The focus of the present paper is mainly on sensitivity analysis of similar days parameter while keeping the parameters same for ANN to forecast hourly electricity prices in the PJM electricity market. We simulated three cases by: (i) selecting two similar days parameters (load at t and price at t): (ii) selecting three similar days parameters (load at t, price at t and price at t - 1), and (iii) selecting five similar days parameters (load at t, load at t - 1, load at t + 1, price at t and price at t - 1). The next - 24 h price forecasts obtained from ANN based on similar days method confirm that the performance of the ANN model is better when five similar days parameters are selected, i.e., the accuracy of the method is enhanced by the addition of load at t - 1 and t + 1. The factors impacting the electricity price forecasting, including time factors, load factors, and historical price factors are well discussed. Mean absolute percentage error (MAPE) and forecast mean square error (FMSE) of reasonably small values were obtained for the PJM data, which has correlation coefficient of determination (R2) of 0.7758 between load and electricity price.
Keywords :
load forecasting; mean square error methods; neural nets; power markets; power system analysis computing; power system economics; power system parameter estimation; pricing; sensitivity analysis; ANN model; Euclidean norm; PJM electricity market; artificial neural network; correlation coefficient; forecast mean square error method; historical price factors; load factors; mean absolute percentage error; sensitivity analysis; short-term electricity price forecasting; similar-days parameter identification method; Artificial neural networks; Economic forecasting; Electricity supply industry; Energy consumption; Hidden Markov models; Load forecasting; Power generation; Risk management; Sensitivity analysis; Weather forecasting; Artificial neural network; electricity price fore-casting; locational marginal prices (LMPs); power market; similar days;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Power Symposium, 2007. NAPS '07. 39th North American
Conference_Location :
Las Cruces, NM
Print_ISBN :
978-1-4244-1726-1
Electronic_ISBN :
978-1-4244-1726-1
Type :
conf
DOI :
10.1109/NAPS.2007.4402367
Filename :
4402367
Link To Document :
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