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, demand uncertainty, and storage limitations. Quantify uncertainty: Apply advanced techniques to assess and mitigate market-driven performance and investment risks. Develop real-time control schemes: Design
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time and handle uncertainty. Artificial Intelligence (AI) may be of critical help here. This PhD project aims to develop a hybrid AI framework for quality control in AM-based remanufacturing. You will
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asymptotic analysis of stochastic processes Impact: Faster detection of anomalies and reliable uncertainty quantification Job Description As a PhD candidate in Mathematical Statistics, you will develop novel
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Challenge: Distinguish noise and signal in data streams Change: Refined asymptotic analysis of stochastic processes Impact: Faster detection of anomalies and reliable uncertainty quantification Job
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on quantitative analysis with sufficient validation. How should we collect right, timely, reliable data? How do we transfer models and data sourced from multiple, heterogeneous lifts? How do we model uncertainty
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or individual techno-economic assessment of heat storage and geothermal heat sources. One of the challenges for such an approach is the combination of subsurface (geological) heterogeneity and uncertainty with
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(geological) heterogeneity and uncertainty with the performance of various technical components of the heating systems in different climatic conditions. To address this complexity, a team of geological and
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. However, the technology is not yet fully mature, which creates technical, economic, and scale-up risks during implementation. These uncertainties result in higher-than-expected costs and limit widespread
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. However, the technology is not yet fully mature, which creates technical, economic, and scale-up risks during implementation. These uncertainties result in higher-than-expected costs and limit widespread
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PhD candidates and close to 3000 BSc and MSc students apply aerospace engineering disciplines to address the global societal challenges that threaten us today, climate change without doubt being