4.7 Article

Machine Learning Force Field Parameters from Ab lnitio Data

期刊

JOURNAL OF CHEMICAL THEORY AND COMPUTATION
卷 13, 期 9, 页码 4492-4503

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.jctc.7b00521

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资金

  1. Margaret Butler Postdoctoral Fellowship at Argonne Leadership Computing Facility
  2. DOE Office of Science User Facility [DE-AC02-06CH11357]
  3. U.S. Department of Energy, Office of Science, Office of Basic Energy Sciences [DE-AC02-06CH11357]
  4. National Institutes of Health [R01-GM072558]
  5. National Heart, Lung and Blood Institute of the National Institutes of Health
  6. utilized high-performance computational capabilities of the LoBoS clusters at the National Institutes of Health

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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 on 4943 dimer electrostatic potentials and 1250 cluster interaction energies for methanol. Excellent agreement between the training data set from QM calculations and the optimized force field model was achieved. The results were further improved by introducing an offset factor during the machine learning process to compensate for the discrepancy between the QM calculated energy and the energy reproduced by optimized force field, while maintaining the local shape of the QM energy surface. Throughout the machine learning process, experimental observables were not involved in the objective function, but were only used for model validation. The best model, optimized from the QM data at the DFMP2(fc)/jul-cc-pVTZ level, appears to perform even better than the original AMOEBA force field (amoeba09.prm), which was optimized empirically to match liquid properties. The present effort shows the possibility of using machine learning techniques to develop descriptive polarizable force field using only QM data. The ML/GA strategy to optimize force fields parameters described here could easily be extended to other molecular systems.

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