Forschungsschwerpunkte
Currently, my primary research interest is in Multi-Objective Reinforcement Learning (MORL), an extension of classical Reinforcement Learning in which an agent simultaneously optimizes multiple, often competing objectives. Rather than seeking a single optimal solution, MORL aims to identify a set of solutions representing diverse trade-offs between objectives, thereby enabling decision systems that accommodate various requirements. A key aspect of my research involves effectively integrating evolutionary algorithms with Reinforcement Learning methods to address complex multi-objective decision problems efficiently, thus facilitating optimal compromises among competing objectives.
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I am also interested in Multi-Agent Reinforcement Learning (MARL), which explores how multiple autonomous agents interact and learn either collaboratively or competitively. A particularly interesting area is the combination of MARL with MORL, which enables the creation of systems in which multiple agents simultaneously pursue and optimize multiple objectives.
Publikationen
2025 |
Neele Kemper, Michael Heider, Dirk Pietruschka and J?rg H?hner. 2025. A comparative study of multi-objective and neuroevolutionary-based reinforcement learning algorithms for optimizing electric vehicle charging and load management. DOI: 10.1016/j.apenergy.2025.125890 |
Neele Kemper, Michael Heider, Dirk Pietruschka and J?rg H?hner. 2025. Forecasting of residential unit's heat demands: a comparison of machine learning techniques in a real-world case study. DOI: 10.1007/s12667-023-00579-y |
Lehrveranstaltungen
Name | Semester | Typ |
---|---|---|
Studentische Arbeiten am Lehrstuhl Organic Computing | Sommersemester 2025 | sonstige |
Seminar Organic Computing (Master) | Sommersemester 2025 | Seminar |
?bung zu Autonomous and Self-learning Systems | Sommersemester 2025 | ?bung |
Autonomous and Self-learning Systems | Sommersemester 2025 | Vorlesung |
Seminar Organic Computing (Bachelor) | Sommersemester 2025 | Seminar |