51 – 60 of 419
- show: 10
- |
- sort: year (new to old)
Close
Embed this list
<iframe src=""
width=""
height=""
allowtransparency="true"
frameborder="0">
</iframe>
- 2023
-
Mark
Collective Intelligence Function in Extreme Weather Conditions : High-Resolution Impact Assessment of Energy Flexibility on Building Energy Performance
(2023) 5th International Conference on Building Energy and Environment, COBEE 2022 In Environmental Science and Engineering p.1395-1404
- Chapter in Book/Report/Conference proceeding › Paper in conference proceeding
-
Mark
CIRLEM : a synergic integration of Collective Intelligence and Reinforcement Learning in Energy Management for enhanced climate resilience and lightweight computation
- Contribution to journal › Article
-
Mark
Evaluating the Indoor Radon Concentrations in the Swedish Building Stock Using Statistical and Machine Learning
- Chapter in Book/Report/Conference proceeding › Paper in conference proceeding
-
Mark
Quantifying Circadian Heat, Moisture, and Carbon Loads of Overcrowded Swedish Apartments - A Synthesis
- Chapter in Book/Report/Conference proceeding › Paper in conference proceeding
-
Mark
Impact of different water penetration criteria and cavity ventilation rates on the risk of mold growth in timber frame walls with brick veneer cladding
- Contribution to journal › Article
- 2022
-
Mark
The impact of a DCV-system on the IAQ, energy use, and moisture safety in apartments - a case study
- Contribution to journal › Article
-
Mark
Combining computational fluid dynamics and neural networks to characterize microclimate extremes : Learning the complex interactions between meso-climate and urban morphology
- Contribution to journal › Article
-
Mark
A review of the current status and development of 5GDHC and characterization of a novel shared energy system
- Contribution to journal › Article
-
Mark
High-resolution impact assessment of climate change on building energy performance considering extreme weather events and microclimate – Investigating variations in indoor thermal comfort and degree-days
- Contribution to journal › Article
-
Mark
Predicting the presence of hazardous materials in buildings using machine learning
- Contribution to journal › Article
