A machine learning-based surrogate model to approximate optimal building retrofit solutions
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Georgios Mavromatidis | Kristina Orehounig | Aurelien Lucchi | Emmanouil Thrampoulidis | Aurélien Lucchi | G. Mavromatidis | K. Orehounig | Emmanouil Thrampoulidis
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