Daniel Bayer
Phone | (0931) 31-89632 |
daniel.bayer@uni-wuerzburg.de | |
Room | 01.019 (Building M4) |
Address | Lehrstuhl für Informatik XI |
Short CV
Daniel Bayer works as a research assistant at the Chair of Computer Science (Modeling and Simulation). He completed a Bachelor's degree in Mathematics, followed by a Master's degree in Computer Science at Friedrich-Alexander-Universität Erlangen-Nürnberg. During his studies, he gained valuable experience as a working student in system administration, data science and predictive maintenance in a major German energy company. Currently, Daniel contributes to the DigiSWM research project, where he focuses on using AI methods to combine and analyze extensive energy data. His work aims to simulate and evaluate innovative energy services.
During his studies, Daniel was a scholarship recipient of the Friedrich Naumann Foundation for Freedom. He also received an online scholarship from e-fellows, awarded for his outstanding high school achievements.
Research Interests
His research interests center around digital twins and data-driven simulations of local energy systems, particularly in the building sector. His work aims to support long-term sustainable and climate-neutral energy supply through the optimal dimensioning and control of heating and energy supply systems. This topic also includes the short-term prediction of energy demand and generation at the local level. Additionally, he explores topics such as multi-agent reinforcement learning and sustainable computing, focusing on the control of building-related energy systems, including HVAC, battery storage controllers, and EV charging stations.
Research projects
Recent Publications
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Data-driven heat pump retrofit analysis in residential buildings: Carbon emission reductions and economic viability. . In Applied Energy, 373, p. 123823. Elsevier BV, 2024.
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Electricity Demand Forecasting in Future Grid States: A Digital Twin-Based Simulation Study. . In 2024 9th International Conference on Smart and Sustainable Technologies (SpliTech), pp. 1–6. IEEE, 2024.
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Estimating the seasonal performance and electricity consumption of retrofitted heat pumps. . In Data-Centric Engineering, 5, p. e39-. Cambridge University Press, 2024.
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Modeling of Annual and Daily Electricity Demand of Retrofitted Heat Pumps based on Gas Smart Meter Data. . In Proceedings of the 10th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation, of BuildSys ’23. ACM, 2023.
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A digital twin of a local energy system based on real smart meter data. . In Energy Informatics, 6(1). Springer Science and Business Media {LLC}, 2023.
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Enhancing the Performance of Multi-Agent Reinforcement Learning for Controlling HVAC Systems. . In 2022 IEEE Conference on Technologies for Sustainability (SusTech), pp. 187–194. 2022.
Related News
- Presentation at Winter Simulation Conference 2024
- New Publication in Data-Centric Engineering Journal on Heat Pump Performance Estimation
- New Publication in Applied Energy Journal on Carbon Emission Reduction Potential of a Heat Pump Retrofit
- Presentation on Demand Forecasting in Future Grid States
- IGSTC Workshop 2024 in Chandigarh, India