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@article{ Wederhake2022, title = {Benchmarking building energy performance: Accuracy by involving occupants in collecting data - A case study in Germany}, author = {Wederhake, Lars and Wenninger, Simon and Wiethe, Christian and Fridgen, Gilbert and Stirnweiß, Dominic}, journal = {Journal of Cleaner Production}, pages = {1-12}, volume = {379}, year = {2022}, issn = {0959-6526}, doi = {https://doi.org/10.1016/j.jclepro.2022.134762}, urn = {https://nbn-resolving.org/urn:nbn:de:0168-ssoar-91935-5}, abstract = {Energy performance certificates (EPC) aim to provide transparency about building energy performance (BEP) and benchmark buildings. Despite having qualified auditors examining buildings through on-site visits, BEP accuracy in EPCs is frequently criticized. Qualified auditors are often bound to engineering-based energy quantification methods. However, recent studies have revealed data-driven methods to be more accurate regarding benchmarking. Unlike engineering methods, data-driven methods can learn from data that non-experts might collect. This raises the question of whether data-driven methods allow for simplified data collection while still achieving the same accuracy as prescribed engineering-based methods. This study presents a method for selecting building variables, which even occupants can reliably collect and which at the same time contribute most to a data-driven method's predictive power. The method is tested and validated in a case study on a real-world data set containing 25,000 German single-family houses. Having all data collected by non-experts, results show that the data-driven method achieves about 35% higher accuracy than the currently used engineering method by qualified auditors. Our study proposes a stepwise method to design data-driven EPCs, outlines design recommendations, and derives policy implications.}, keywords = {Bundesrepublik Deutschland; Federal Republic of Germany; Gebäude; building; Energieeinsparung; energy saving; Energie; energy; Effizienz; efficiency; Datenerfassung; data acquisition; Bewohner; inhabitant; Einfamilienhaus; single-family residence}}