2022 American Control Conference (ACC) 2022
DOI: 10.23919/acc53348.2022.9867870
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A Framework for Guaranteed Error-bounded Surrogate Modeling

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“…Data-driven surrogate [206][207][208] and ML models can provide a highly accurate prediction that is on par or superior to the heavily used thermodynamic equation of states. Also, the exact MILP formulation of the trained ReLU-ANN model allows for the development of a part of the molecular model as MILP.…”
Section: Song Et Al [186]mentioning
confidence: 99%
“…Data-driven surrogate [206][207][208] and ML models can provide a highly accurate prediction that is on par or superior to the heavily used thermodynamic equation of states. Also, the exact MILP formulation of the trained ReLU-ANN model allows for the development of a part of the molecular model as MILP.…”
Section: Song Et Al [186]mentioning
confidence: 99%