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Optimization
Machine learning in process systems engineering: Challenges and opportunities
This “white paper” is a concise perspective of the potential of machine learning in the process systems engineering (PSE) domain, based …
Prodromos Daoutidis
,
Jay H. Lee
,
Srinivas Rangarajan
,
Leo Chiang
,
Bhushan Gopaluni
,
Artur M. Schweidtmann
,
Iiro Harjunkoski
,
Mehmet Mercangoz
,
Ali Mesbah
,
Fani Boukouvala
,
Fernando V. Lima
,
Dr. Ehecatl Antonio del Rio Chanona
,
Christos Georgakis
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DOI
URL
Model-free safe reinforcement learning for chemical processes using Gaussian processes
Model-free reinforcement learning has been recently investigated for use in chemical process control. Through the iterative creation of …
Dr. Tom Savage
,
Dongda Zhang
,
Max Mowbray
,
Dr. Ehecatl Antonio del Rio Chanona
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DOI
URL
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