Forecasting the Demand of Short-Term Electric Power Load with Large-Scale LP-SVR

Pablo Rivas-Perea,
Juan Cota-Ruiz,
David Garcia Chaparro,
Abel Quezada Carreón,
Francisco J. Enríquez Aguilera,
Jose-Gerardo Rosiles

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References

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