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, and heat within a robust energy system Develop methodological approaches and assumptions for a realistic representation of uncertainties and disruptions in energy system models Evaluate scenarios and
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) develop dedicated representations for catalyst mixtures; 2) apply the developed representations to building predictive models for catalyst activity and selectivity; 3) employ the developed representations
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your work package, for the preparation of a doctorate, contains: Knowledge Representation and Reasoning, Logic Programming and other logic-based methods have a long history in the field of Artificial
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support the development of a European energy system model by benchmarking future technologies and optimizing their representation within the FINE optimization modelling framework ( https://github.com/FZJ
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the collaboration. In particular, the following open questions will be addressed: What is a sequence-structure-function representation space for molecules in the context of closed-loop optimization, that supports
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basic research with knowledge transfer to the public, the media and policymakers. Since 2009, PRIF has been a member of the Leibniz Association, a national umbrella organization of outstanding non
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investigates the representation and preservation of feminist and women’s cultural heritage within India's Marathi film industry archives. We are particularly interested in projects invested in studying
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transportation decision-making by exploring a wide range of possible scenarios, including unexpected and negative outcomes. By integrating machine learning, metamodeling, and causal representation learning, we aim
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of natural and technical options for provision of negative emissions · Simplified representation of CO2 transport and CO2 storage in the energy system model · Development of scenarios for the use of CO2
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dedicated experiments (e.g., flares vs. chaff). Providing observational constraints on turbulence and thermal effects to improve the representation of microphysical processes in model simulations