Walch, AlinaCastello, RobertoMohajeri, NahidGudmundsson, AgustScartezzini, Jean-Louis2022-01-012022-01-012022-01-012021-01-0110.1088/1742-6596/2042/1/012010https://infoscience.epfl.ch/handle/20.500.14299/184195WOS:000724676100010The increasing use of ground-source heat pumps (GSHPs) for heating and cooling of buildings raises questions regarding the technical potential of GSHPs and their impact on the temperature in the shallow subsurface. In this paper, we develop a method using Machine Learning to estimate the technical potential of shallow GSHPs, which enables such an estimation for Switzerland with limited data and computational resources. A training dataset is constructed based on meteorological and geological data across Switzerland. We analyse correlations and the importance of each of the input data for estimating the GSHP potential and compare different input feature sets and Machine Learning models. The Random Forest algorithm, trained on the full dataset, provides the best performance to estimate the GSHP potential. The resulting model yields an R-2 score of 0.95 for the annual energy potential, 0.86 for the heat extraction rate, and 0.82 for the potential number of boreholes per GSHP system.Construction & Building TechnologyGreen & Sustainable Science & TechnologyEnergy & FuelsRegional & Urban PlanningConstruction & Building TechnologyScience & Technology - Other TopicsEnergy & FuelsPublic AdministrationUsing Machine Learning to estimate the technical potential of shallow ground-source heat pumps with thermal interferencetext::conference output::conference proceedings::conference paper