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Type: 
Journal
Description: 
Short-Term Load Forecasting (STLF) is a fundamental instrument in the efficient operational management and planning of electric utilities. Emerging smart grid technologies pose new challenges and opportunities. Although load forecasting at the aggregate level has been extensively studied, electrical load forecasting at fine-grained geographical scales of households is more challenging. Among existing approaches, semi-parametric generalized additive models (GAM) have been increasingly popular due to their accuracy, flexibility, and interpretability. Their applicability is justified when forecasting is addressed at higher levels of aggregation, since the aggregated load pattern contains relatively smooth additive components. High resolution data are highly volatile, forecasting the average load using GAM models with smooth components does not provide meaningful information about the future demand. Instead …
Publisher: 
Elsevier
Publication date: 
12 Jun 2020
Authors: 

Umberto Amato, Anestis Antoniadis, Italia De Feis, Yannig Goude, Audrey Lagache

Biblio References: 
Origin: 
International Journal of Forecasting