49 environmental science microplastics PhD scholarships at University of Twente in Netherlands
Sort by
Refine Your Search
-
Vacancies PhD position in Capabilities and diversity in ethics of technology Key takeaways Key takeaways The aim of this research project is to develop an approach for ethically assessing
-
-regulation. The interdisciplinary research team (consisting of 4 PhDs, 3 Postdocs and their supervisors) will combine engineering, ecological and socio-economic experiments and models to quantify and predict
-
, environmental, and social sustainability of these physical assets is of growing importance to academia, industry, and society as a whole. Sustainable Asset Management (SAM) is a rapidly developing research area
-
relied on carbon-intensive blast furnaces for iron-ore reduction, contributing significantly to greenhouse gas emissions. However, with global sustainability goals and stricter environmental regulations
-
environmental footprint, development of highly sensitive optical methods for metrology and inspection is crucial for non-contact process characterization and unraveling the associated physical aspects. A
-
attend several European PhD courses and participate in extended research stays abroad. You will join the Industrial Engineering and Business Information Systems (IEBIS) section of the High-tech Business
-
. You will attend several European PhD courses and participate in extended research stays abroad. You will join the Industrial Engineering and Business Information Systems (IEBIS) section of the High-tech
-
challenges. Research Area and Project description: A PhD position is available for a research project at the intersection of computational mechanics, nonlinear solid mechanics, artificial neural networks (ANNs
-
: methods assume that researchers make all important analysis choices before gathering the data. In modern data science age, however, data-driven paradigms have become dominant: many measurements are gathered
-
: methods assume that researchers make all important analysis choices before gathering the data. In modern data science age, however, data-driven paradigms have become dominant: many measurements are gathered