Development of a Low-Cost Data Acquisition System for Very Short-Term Photovoltaic Power Forecasting
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Rodrigo Flora Calili | Guilherme Fonseca Bassous | Carlos Hall Barbosa | C. H. Barbosa | R. Calili | G. Bassous
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