High‐throughput screening of optimal process conditions using model predictive control
Niels Krausch(Technische Universität Berlin), Mariano Nicolás Cruz Bournazou(Technische Universität Berlin), Tilman Barz(Austrian Institute of Technology), Stefan Schiller(Goethe University Frankfurt), Sergio Lucia(TU Dortmund University), Jong Woo Kim(Technische Universität Berlin), Peter Neubauer(Technische Universität Berlin), Matthias C. Huber(University of Freiburg), Sebastian Groß
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