2022 Annual Meeting
(544g) Incorporating Materials Surrogate Models into Process Models for Adsorption-Based Gas Seperations
We develop and illustrate our proposed methodologies with PSA process and MOFs adsorbents. On the first step, we developed an automatic pipeline for learning materials surrogate models from user-input MOFs structure files. The pipeline starts by initiating molecular simulation runs to get adsorption isotherm data points of input structures and then regress those data points to obtain algebraic isotherm model parameters. Meanwhile, a pool of molecular descriptors is computed that describe MOFs design space. The quality of surrogate model depends on the selection of features and data points. We thus build machine learning models to facilitate feature selection and data points filtration. Then we learn an algebraic surrogate model that satisfactorily links the MOFs descriptors (i.e., features) with the isotherm model parameters (i.e., labels). Those materials surrogate models can thus be easily integrated into equation-oriented process models. We illustrate this by constructing a customized fidelity-tunable PSA column unit model via IDAES-PSE framework5 and incorporate the learned surrogate model with the process model. The resulting integrated model have both materials descriptors variables and process decision variables, thus enabling process-materials simultaneous simulation, design and optimization.
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