EB
Eric Bradford
5 records found
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Novel materials are the backbone of major technological advances. However, the development and wide-scale introduction of new materials, such as nanomaterials, is limited by three main factors—the expense of experiments, inefficiency of synthesis methods and complexity of scale-u
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An accelerated approach for efficient development and scaling of new material technologies, combining flow synthesis with machine learning. Case study
Nanostructured ZnO for antibacterial coatings
New material innovation is limited by the time, expertise and cost of development. In the face of rapidly growing crises like pandemics, resource scarcity and climate change, we require new methods and methodologies to create and scale-up new technologies. In this work, we introd
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Many engineering problems require the optimization of expensive, black-box functions involving multiple conflicting criteria, such that commonly used methods like multiobjective genetic algorithms are inadequate. To tackle this problem several algorithms have been developed using
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Machine learning meets continuous flow chemistry
Automated optimization towards the Pareto front of multiple objectives
Automated development of chemical processes requires access to sophisticated algorithms for multi-objective optimization, since single-objective optimization fails to identify the trade-offs between conflicting performance criteria. Herein we report the implementation of a new mu
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Dynamic modeling is an important tool to gain better understanding of complex bioprocesses and to determine optimal operating conditions for process control. Currently, two modeling methodologies have been applied to biosystems: kinetic modeling, which necessitates deep mechanist
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