Novel deep hybrid model for electricity price prediction based on dual decomposition
Sujan Ghimire(University of Southern Queensland), Sancho Salcedo‐Sanz(Universidad de Alcalá), A. A. Masrur Ahmed(NSW Department of Planning and Environment), David Casillas-Pérez(Universidad Rey Juan Carlos), Ravinesh C. Deo(University of Southern Queensland), Thong Nguyen‐Huy(University of Southern Queensland)
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