Energy-Geometry Dependency of Molecular Structures: A Multistep Machine Learning Approach.
Ehsan MoharreriMaryam PardakhtiRanjan SrivastavaSteven L SuibPublished in: ACS combinatorial science (2019)
There is growing interest in estimating quantum observables while circumventing expensive computational overhead for facile in silico materials screening. Machine learning (ML) methods are implemented to perform such calculations in shorter times. Here, we introduce a multistep method based on machine learning algorithms to estimate total energy on the basis of spatial coordinates and charges for various chemical structures, including organic molecules, inorganic molecules, and ions. This method quickly calculates total energy with 0.76 au in root-mean-square error (RMSE) and 1.5% in mean absolute percent error (MAPE) when tested on a database of optimized and unoptimized structures. Using similar molecular representations, experimental thermochemical properties were estimated, with MAPE as low as 6% and RMSE of 8 cal/mol·K for heat capacity in a 10-fold cross-validation.
Keyphrases
- machine learning
- artificial intelligence
- high resolution
- big data
- molecular dynamics
- deep learning
- water soluble
- quantum dots
- reduced graphene oxide
- single molecule
- molecular docking
- working memory
- molecular dynamics simulations
- sensitive detection
- density functional theory
- mass spectrometry
- visible light
- energy transfer