Group Equivalent Machine Learning Approach to Predict Hydrocarbon Strain Energy
ORAL
Abstract
Strain energy is an important property in molecules intended for reactive and energetic applications. We present a machine learning approach to predict hydrocarbon strain energies using Benson group equivalents. An algorithm is developed to break down hydrocarbons into their group equivalent components and a combined featurization strategy is developed using the group equivalents and other simple physicochemical features. The training data are obtained from a limited number of quantum chemistry simulations. A machine learning approach to predict hydrocarbon molecule strain energies is then described and evaluated.
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Presenters
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Jesse C Carter Hearn
University of Maryland, College Park
Authors
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Jesse C Carter Hearn
University of Maryland, College Park
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Brian C Barnes
U.S. Army Combat Capabilities Development Command (DEVCOM) Army Research Laboratory
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Betsy M Rice
US Army Research Lab Aberdeen
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Peter W Chung
University of Maryland, College Park