Machine Learning Force Field Parameters from Ab Initio Data

Volume: 13, Issue: 9, Pages: 4492 - 4503
Published: Sep 1, 2017
Abstract
Machine learning (ML) techniques with the genetic algorithm (GA) have been applied to determine a polarizable force field parameters using only ab initio data from quantum mechanics (QM) calculations of molecular clusters at the MP2/6-31G(d,p), DFMP2(fc)/jul-cc-pVDZ, and DFMP2(fc)/jul-cc-pVTZ levels to predict experimental condensed phase properties (i.e., density and heat of vaporization). The performance of this ML/GA approach is demonstrated...
Paper Details
Title
Machine Learning Force Field Parameters from Ab Initio Data
Published Date
Sep 1, 2017
Volume
13
Issue
9
Pages
4492 - 4503
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