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Quirin Göttl
Quirin Göttl
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Title
Cited by
Cited by
Year
Automated synthesis of steady-state continuous processes using reinforcement learning
Q Göttl, DG Grimm, J Burger
Frontiers of Chemical Science and Engineering, 1-15, 2022
232022
Automated flowsheet synthesis using hierarchical reinforcement learning: proof of concept
Q Göttl, Y Tönges, DG Grimm, J Burger
Chemie Ingenieur Technik 93 (12), 2010-2018, 2021
162021
Using Reinforcement Learning in a Game-like Setup for Automated Process Synthesis without Prior Process Knowledge
Q Göttl, DG Grimm, J Burger
Computer Aided Chemical Engineering 49, 1555-1560, 2022
42022
Automated Process Synthesis Using Reinforcement Learning
Q Göttl, D Grimm, J Burger
Computer Aided Chemical Engineering 50, 209-214, 2021
32021
Convex Envelope Method for determining liquid multi-phase equilibria in systems with arbitrary number of components
Q Göttl, J Pirnay, DG Grimm, J Burger
Computers & Chemical Engineering 177, 108321, 2023
12023
Policy-Based Self-Competition for Planning Problems
J Pirnay, Q Göttl, J Burger, DG Grimm
arXiv preprint arXiv:2306.04403, 2023
12023
Multiple solutions when fitting excess Gibbs energy models and implications for process simulation
D Vasiliu, Q Göttl, S Bröcker, J Burger
Chemie Ingenieur Technik 93 (3), 490-496, 2021
12021
Deep reinforcement learning uncovers processes for separating azeotropic mixtures without prior knowledge
Q Göttl, J Pirnay, J Burger, DG Grimm
arXiv preprint arXiv:2310.06415, 2023
2023
Automatisierte Fließbildsynthese durch Reinforcement Learning
Q Göttl, DG Grimm, J Burger
Chemie Ingenieur Technik 92 (9), 1240-1240, 2020
2020
Deep Reinforcement Learning Enables Conceptual Design of Processes for Separating Azeotropic Mixtures Without Prior Knowledge
Q Göttl, J Pirnay, J Burger, DG Grimm
Available at SSRN 4776784, 0
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