Nonlinear reactor design optimization with embedded microkinetic model information
Nonlinear reactor design optimization with embedded microkinetic model information
Despite the success of multiscale modeling in science and engineering, embedding molecular-level information into nonlinear reactor design and control optimization problems remains challenging. In this work, we propose a computationally tractable scale-bridging approach that incorporates information from multi-product microkinetic (MK) models with thousands of rates and chemical species into nonlinear reactor design optimization problems. We demonstrate reduced-order kinetic (ROK) modeling approaches for catalytic oligomerization in shale gas processing. We assemble a library of six candidate ROK models based on literature and MK model structure. We find that three metrics—quality of fit (e.g., mean squared logarithmic error), thermodynamic consistency (e.g., low conversion of exothermic reactions at high temperatures), and model identifiability—are all necessary to train and select ROK models. The ROK models that closely mimic the structure of the MK model offer the best compromise to emulate the product distribution. Using the four best ROK models, we optimize the temperature profiles in staged reactors to maximize conversions to heavier oligomerization products. The optimal temperature starts at 630–900K and monotonically decreases to approximately 560 K in the final stage, depending on the choice of ROK model. For all models, staging increases heavier olefin production by 2.5% and there is minimal benefit to more than four stages. The choice of ROK model, i.e., model-form uncertainty, results in a 22% difference in the objective function, which is twice the impact of parametric uncertainty; we demonstrate sequential eigendecomposition of the Fisher information matrix to identify and fix sloppy model parameters, which allows for more reliable estimation of the covariance of the identifiable calibrated model parameters. First-order uncertainty propagation determines this parametric uncertainty induces less than a 10% variability in the reactor optimization objective function. This result highlights the importance of quantifying model-form uncertainty, in addition to parametric uncertainty, in multi-scale reactor and process design and optimization. Moreover, the fast dynamic optimization solution times suggest the ROK strategy is suitable for incorporating molecular information in sequential modular or equation-oriented process simulation and optimization frameworks.
data science (DS), dynamic optimization (DO), multiscale modeling and computation, reactor design and operation, shale gas (SG)
Ghosh, Kanishka
89990254-8d8b-43d6-b0f2-facec41ff60b
Vernuccio, Sergio
4bafd7f3-0943-4f6c-bc78-b4026516ccdb
Dowling, Alexander W.
d0bc0f3d-aa47-4c0f-ab0e-41f6af0f5870
18 July 2022
Ghosh, Kanishka
89990254-8d8b-43d6-b0f2-facec41ff60b
Vernuccio, Sergio
4bafd7f3-0943-4f6c-bc78-b4026516ccdb
Dowling, Alexander W.
d0bc0f3d-aa47-4c0f-ab0e-41f6af0f5870
Ghosh, Kanishka, Vernuccio, Sergio and Dowling, Alexander W.
(2022)
Nonlinear reactor design optimization with embedded microkinetic model information.
Frontiers in Chemical Engineering, 4, [898685].
(doi:10.3389/fceng.2022.898685).
Abstract
Despite the success of multiscale modeling in science and engineering, embedding molecular-level information into nonlinear reactor design and control optimization problems remains challenging. In this work, we propose a computationally tractable scale-bridging approach that incorporates information from multi-product microkinetic (MK) models with thousands of rates and chemical species into nonlinear reactor design optimization problems. We demonstrate reduced-order kinetic (ROK) modeling approaches for catalytic oligomerization in shale gas processing. We assemble a library of six candidate ROK models based on literature and MK model structure. We find that three metrics—quality of fit (e.g., mean squared logarithmic error), thermodynamic consistency (e.g., low conversion of exothermic reactions at high temperatures), and model identifiability—are all necessary to train and select ROK models. The ROK models that closely mimic the structure of the MK model offer the best compromise to emulate the product distribution. Using the four best ROK models, we optimize the temperature profiles in staged reactors to maximize conversions to heavier oligomerization products. The optimal temperature starts at 630–900K and monotonically decreases to approximately 560 K in the final stage, depending on the choice of ROK model. For all models, staging increases heavier olefin production by 2.5% and there is minimal benefit to more than four stages. The choice of ROK model, i.e., model-form uncertainty, results in a 22% difference in the objective function, which is twice the impact of parametric uncertainty; we demonstrate sequential eigendecomposition of the Fisher information matrix to identify and fix sloppy model parameters, which allows for more reliable estimation of the covariance of the identifiable calibrated model parameters. First-order uncertainty propagation determines this parametric uncertainty induces less than a 10% variability in the reactor optimization objective function. This result highlights the importance of quantifying model-form uncertainty, in addition to parametric uncertainty, in multi-scale reactor and process design and optimization. Moreover, the fast dynamic optimization solution times suggest the ROK strategy is suitable for incorporating molecular information in sequential modular or equation-oriented process simulation and optimization frameworks.
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Published date: 18 July 2022
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Copyright © 2022 Ghosh, Vernuccio and Dowling.
Keywords:
data science (DS), dynamic optimization (DO), multiscale modeling and computation, reactor design and operation, shale gas (SG)
Identifiers
Local EPrints ID: 495595
URI: http://eprints.soton.ac.uk/id/eprint/495595
ISSN: 2673-2718
PURE UUID: 9e26a067-1316-4bb2-99e5-25aa3f11784c
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Date deposited: 19 Nov 2024 17:33
Last modified: 21 Nov 2024 03:11
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Contributors
Author:
Kanishka Ghosh
Author:
Sergio Vernuccio
Author:
Alexander W. Dowling
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