A Review of Energy Consumption Forecasting in Smart Buildings: Methods, Input Variables, Forecasting Horizon and Metrics
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Luis Hernández-Callejo | Angel L. Zorita-Lamadrid | Oscar Duque-Perez | Deyslen Mariano-Hernández | Felix Santos García | L. Hernández-Callejo | D. Mariano-Hernández | Ó. Duque-Pérez | Á. Zorita-Lamadrid | F. García
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