Artículo de revista
Locational marginal price forecasting using svr-based multi-output regression in electricity markets
Fecha
2022Registro en:
1996-1073
Universidad Autónoma de Occidente
Repositorio Educativo Digital
Autor
Moreno Chuquen, Ricardo
Chamorro, Harold R.
Riquelme Domínguez, José Miguel
González Longatt, Francisco
Cantillo Luna, Cantillo Luna, Sergio Sergio
Institución
Resumen
Electricity markets provide valuable data for regulators, operators, and investors. The
use of machine learning methods for electricity market data could provide new insights about the
market, and this information could be used for decision-making. This paper proposes a tool based
on multi-output regression method using support vector machines (SVR) for LMP forecasting. The
input corresponds to the active power load of each bus, in this case obtained through Monte Carlo
simulations, in order to forecast LMPs. The LMPs provide market signals for investors and regulators.
The results showed the high performance of the proposed model, since the average prediction error
for fitting and testing datasets of the proposed method on the dataset was less than 1%. This provides
insights into the application of machine learning method for electricity markets given the context of
uncertainty and volatility for either real-time and ahead markets