2023 AIChE Annual Meeting
(235c) Machine Learning Model Based Guidelines for Material Selection in Membrane-Based Gas Separation Processes
Authors
In this study, guidelines for membrane material selection from a process-scale perspective are proposed, and the optimal membrane is selected by applying this method to an actual material database The study consists of two parts: an analysis and optimization at the process level, and an application and validation using an open-source material database. First, a machine learning (ML)-based membrane process model is developed to derive feasible ranges of permeance and selectivity that can achieve a product purity of more than 99%. Next, an optimization model for product production cost is derived using the ML-based model. The optimization model derives operating and design parameters (feed flow rate, pressure, and module length) that minimize the production cost by given membrane properties, such as permeance and selectivity. The proposed methodology is applied to the âClean, Uniform, Refined with Automatic Tracking from Experimental Databaseâ (CURATED) [5] of covalent organic frame work (COF) to select the optimal membrane for green ammonia based H2/N2 separation process. The permeance and selectivity of each COF are derived from and molecular dynamics and Grand Canonical Monte Carlo simulations.
This study has the following scientific contributions. With the development of a membrane process model based on ML, a feasible operating range based on membrane performance can be derived according to a wide range of various variables. The model thus developed can be used as a guide line for new material development in the future.
Literature cited:
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[2] A.N.V. Azar, S. Velioglu, S. Keskin, Large-Scale Computational Screening of Metal Organic Framework (MOF) Membranes and MOF-Based Polymer Membranes for H2/N2 Separations, ACS Sustainable Chemistry and Engineering. 7 (2019) 9525â9536. https://doi.org/10.1021/acssuschemeng.9b01020.
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