Treffer: Optimization of Marginal Price Forecasting in Mexico through applying Machine Learning Models.

Title:
Optimization of Marginal Price Forecasting in Mexico through applying Machine Learning Models.
Authors:
Guzmán Escobar, Marcos Fidel1 fidel.mfge@gmail.com, Aguilar Lasserre, Alberto Alfonso1 albertoaal@hotmail.com, Del Moral Argumedo, Marco Julio1 marcojulioarg@gmail.com, Hernández Flores, Nicasio2 garroyo@ineel.mx, Arroyo Figueroa, Gustavo2
Source:
International Journal of Combinatorial Optimization Problems & Informatics. Nov2024, Vol. 15 Issue 4, p19-41. 23p.
Database:
Academic Search Index

Weitere Informationen

The Local Marginal Price (LMP) represents the value of energy at a specific moment and location, and its proper management is crucial for the development of the country's strategic sectors. This study compares the ADR, RPSG, SARIMA, and LSTM-H models for predicting the LMP, achieving an approximate effectiveness of 88%. By implementing it in 28 nodes of the three interconnection systems (SIN, BCA, and BCS) in Mexico, the results of the enhanced LSTM network analysis are presented through sensitivity analysis and an ensemble with Prophet, yielding the following metrics: MAE: 0.0189, MSE: 0.0101, RMSE: 0.1007, and MAPE: 12.18, at node 05PAR-115 in Hidalgo del Parral, Chihuahua. This model can construct tree diagrams (ADR) that identify the critical variables for predicting the LMP of any node, significantly contributing to the accuracy of predictive analysis models. [ABSTRACT FROM AUTHOR]