Master Thesis
- Research project:Machine learning based demand side management in residential buildings
- type:Masterarbeit
- Date:As soon as possible
- Tutor:
- Research group:
Energy Demand & Mobility
Machine learning based demand side management in residential buildings
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In order to react to the fluctuating electricity generation by renewable energy sources, flexible electrical loads are necessary. Especially, heat pumps and electric vehicles can react to the green energy of photovoltaic systems and wind turbines in residential buildings. Thus they can help to decarbonize the buildings sector while stabilizing the electricity grid. To use flexible loads intelligent control strategies are essential. Neural networks can learn such complex control strategies based on synthetically generated data and apply the learned strategies in real world settings. The objective of this master thesis is the development of machine learning based approaches for optimal heating system operation.
• Interest in the field of machine learning
M. Sc. Max Kleinebrahm or Dr.-Ing. Thomas Dengiz
E-Mail: max.kleinebrahm∂kit.edu or thomas.dengiz∂kit.edu
Upon successful completion of the Master's thesis, there is an opportunity to further refine the developed algorithms as part of a PhD.