Machine learning and simulation-based surrogate modeling for improved process chain operation
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Antal Dér | Christoph Herrmann | Sebastian Thiede | Klaus Dröder | André Hürkamp | Sebastian Gellrich | C. Herrmann | K. Dröder | S. Thiede | A. Hürkamp | A. Dér | S. Gellrich
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