Day-ahead forecasting of wholesale electricity pricing using extreme learning machine

In a deregulated electricity market where consumers can prepare bidding plans and purchase electricity directly from supplies, consumers can expect the price to fluctuate based on the demand. The consumers can also make economic beneficial decision to use electricity when the price is low. In this context, accurate forecast of the electricity price enable the consumers to plan and make such decisions. This paper proposes a methodology to forecast day-ahead electricity pricing using extreme learning machine. An artificial neural network forecasting model enables inputs variables that affect the output variable. The forecasting model is implemented in MATLAB/Simulink software. The proposed methodology is compared with a simple moving average model, and empirical evidence shows that the proposed methodology has a higher accuracy.

[1]  Bo Meng,et al.  Day-ahead electricity price prediction based on multiple ELM , 2010, 2010 Chinese Control and Decision Conference.

[2]  T. Logenthiran,et al.  Accelerated Lambda Iteration Method for solving economic dispatch with transmission line losses management , 2016, 2016 IEEE Innovative Smart Grid Technologies - Asia (ISGT-Asia).

[3]  Raúl Rojas,et al.  Neural Networks - A Systematic Introduction , 1996 .

[4]  Yeo Injune,et al.  Stochastic implementation of the activation function for artificial neural networks , 2016 .

[5]  Yudho Yudhanto,et al.  Forecasting trend data using a hybrid simple moving average-weighted fuzzy time series model , 2015, 2015 International Conference on Science in Information Technology (ICSITech).

[6]  Kit Po Wong,et al.  Electricity Price Forecasting With Extreme Learning Machine and Bootstrapping , 2012, IEEE Transactions on Power Systems.

[7]  S.F. Ghaderi,et al.  Electricity price forecasting in Iranian electricity market applying Artificial Neural Networks , 2008, 2008 IEEE Canada Electric Power Conference.

[8]  T. Logenthiran,et al.  Fuzzy logic control of energy storage system in microgrid operation , 2016, 2016 IEEE Innovative Smart Grid Technologies - Asia (ISGT-Asia).

[9]  Michael Y. Hu,et al.  Forecasting with artificial neural networks: The state of the art , 1997 .

[10]  R. T. Naayagi,et al.  Hybridization of Genetic Algorithm and Priority List to solve Economic Dispatch problems , 2016, 2016 IEEE Region 10 Conference (TENCON).

[11]  Deregulation in the national electricity market of Singapore: competition and efficiency , 2004, 2004 IEEE International Conference on Electric Utility Deregulation, Restructuring and Power Technologies. Proceedings.

[12]  Takashi Hiyama,et al.  Short-Term Electricity Price Forecasting Using a Combination of Neural Networks and Fuzzy Inference , 2011 .

[13]  T. Logenthiran,et al.  Forecasting of photovoltaic power using extreme learning machine , 2015, 2015 IEEE Innovative Smart Grid Technologies - Asia (ISGT ASIA).