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: Hormone Dynamics of the ENDOTRAIN network and focuses on optimizing the diagnosis of primary aldosteronism using real-world, continuous physiological and hormonal data streams based on chronobiologic
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optimization lab (EES EMPDO lab). The former focuses on intelligent energy network research, including: demand management and flexibility, digital twinning, data analytics, smart grid ICT architectures and
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manufacturing and materials for extreme environments. Generate original research ideas and lead innovative projects that result in multiple high-impact publications annually. Mentor doctoral students and engage
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, as well as cell culture and bioreactor optimization for the production of cultured meat. Be part of change Design 3D scaffolds/hydrogels for efficient cell attachment and differentiation using modified
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position aims to conduct holistic modelling and analysis of integrated energy systems to reach optimal system performance while incorporating various sustainable energy infrastructures. Potential research
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. For complex conditions such as multiple sclerosis and autism spectrum disorder, progress has been slowed by animal models that optimize for single causes or treatments, without reflecting the diversity and
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. This research is performed in two research labs: the Digital power and energy systems lab (EES DigiPES lab) and the Electricity markets and power system optimization lab (EES EMPDO lab). The former focuses
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change, market dynamics, and daily grid variations. These factors contribute to heightened structural and control complexity, along with multiple layers of uncertainty. In this context, Hybrid Power Plants
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properties to performance. Optimize reaction conditions and explore scale-up potential. Document experiments, publish results, and present findings at conferences. Collaborate with the Catalysis Engineering
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focuses on optimizing the diagnosis of primary aldosteronism using real-world, continuous physiological and hormonal data streams based on chronobiologic steroid rhythmicity and environmental challenges