How the Italian Residential Sector Could Contribute to Load Flexibility in Demand Response Activities: A Methodology for Residential Clustering and Developing a Flexibility Strategy
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Gianluigi Lo Basso | Livio de Santoli | Sabrina Romano | Francesco Mancini | Jacopo Cimaglia | F. Mancini | L. de Santoli | G. Lo Basso | S. Romano | Jacopo Cimaglia
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