Predicting the Efficiency of CO$_2$ Sequestering by Metal Organic
Frameworks Through Machine Learning Analysis of Structural and Electronic
Properties
- URL: http://arxiv.org/abs/2110.05753v1
- Date: Tue, 12 Oct 2021 05:55:47 GMT
- Title: Predicting the Efficiency of CO$_2$ Sequestering by Metal Organic
Frameworks Through Machine Learning Analysis of Structural and Electronic
Properties
- Authors: Mahati Manda
- Abstract summary: This project aims to create an algorithm that predicts the uptake of CO$$ adsorbing Metal-Organic Frameworks (MOFs) by using Machine Learning.
This algorithm will save resources such as time and equipment as scientists will be able to disregard hypothetical MOFs with low efficiencies.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Due the alarming rate of climate change, the implementation of efficient
CO$_2$ capture has become crucial. This project aims to create an algorithm
that predicts the uptake of CO$_2$ adsorbing Metal-Organic Frameworks (MOFs) by
using Machine Learning. These values will in turn gauge the efficiency of these
MOFs and provide scientists who are looking to maximize the uptake a way to
know whether or not the MOF is worth synthesizing. This algorithm will save
resources such as time and equipment as scientists will be able to disregard
hypothetical MOFs with low efficiencies. In addition, this paper will also
highlight the most important features within the data set. This research will
contribute to enable the rapid synthesis of CO$_2$ adsorbing MOFs.
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