This is a news story, published by Phys Org, that relates primarily to Lawrence Livermore National Laboratory news.
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CO2 capture mechanismsPhys Org
•92% Informative
Scientists at Lawrence Livermore National Laboratory have developed a machine-learning model to gain an atomic-level understanding of CO2 capture in amine-based sorbents.
The U.S. Department of Energy projects that the majority of national energy production will still come from non-renewable sources by 2050 .
The innovative approach promises to enhance the efficiency of direct air capture ( DAC ) technologies.
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