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Unifying Chemistry And Machine Learning For The Study Of Noncovalent Interactions, Jacob A. Townsend
Unifying Chemistry And Machine Learning For The Study Of Noncovalent Interactions, Jacob A. Townsend
Doctoral Dissertations
Gas separations are in great demand for carbon emission reduction, natural gas purification, oxygen isolation, and much more. Many of these separations rely on cost-prohibitive methods such as cryogenic distillation or strong-binding solvents. As a result, novel materials are being developed to subvert the energetic expense of gas separation processes. These studies focus on improving the performance of alternative materials, including (but not limited to) metal-organic frameworks, covalent organic frameworks, dense polymeric membranes, porous polymers, and ionic liquids.
In this work, the atomistic effects of functional units are explored for gas separations processes using electronic structure theory and machine learning. …