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- 2023
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Mark
Indoor radon interval prediction in the Swedish building stock using machine learning
- Contribution to journal › Article
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Mark
Collective Intelligence for Energy Flexibility - Collectief : An EU H2020 Project for Enhancing Energy Efficiency and Flexibility in Existing Buildings
(2023) 2023 International Conference on Future Energy Solutions, FES 2023 In 2023 International Conference on Future Energy Solutions, FES 2023
- Chapter in Book/Report/Conference proceeding › Paper in conference proceeding
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Mark
Towards Resilient Interconnected Urban Infrastructures : The Nexus Between Energy System, Urban Morphology, and Transportation Network
(2023) 5th International Conference on Building Energy and Environment, COBEE 2022 In Environmental Science and Engineering p.2739-2749
- Chapter in Book/Report/Conference proceeding › Paper in conference proceeding
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Mark
Moisture- and mould-resistance : multi-modal modelling leveraging X-ray tomography in edge-sealed cross-laminated timber
- Contribution to journal › Article
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Mark
Similarities, differences, and tendencies of water damage in the Nordic countries
(2023) 2nd International Conference on Moisture in Buildings
- Contribution to conference › Poster
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Mark
Using urban building energy modeling to quantify the energy performance of residential buildings under climate change
- Contribution to journal › Article
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Mark
Modelling an air handling unit, building and occupant variation regarding energy, moisture and frost protection based on measurements of an air handling unit and occupants’ moisture supply
- Contribution to journal › Article
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Mark
Evidence of Unrecognized Indoor Exposure to Toxic Chlorophenols and Odorous Chloroanisoles in Denmark, Finland, and Norway
- Contribution to journal › Article
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Mark
Designing climate resilient energy systems in complex urban areas considering urban morphology : A technical review
- Contribution to journal › Scientific review
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Mark
Machine learning models for the prediction of polychlorinated biphenyls and asbestos materials in buildings
- Contribution to journal › Article
