We apply on-the-fly machine learning potentials (MLPs) using the sparse Gaussian process regression (SGPR) algorithm for fast optimization of atomic structures. Great acceleration is achieved even in the context of a single local optimization. Although for finding the exact local minimum, due to limited accuracy of MLPs, switching to another algorithm may be needed. For random gold clusters, the forces are reduced to similar to 0.1 eV angstrom(-1) within less than ten first-principles (FP) calculations. Because of highly transferable MLPs, this algorithm is specially suitable for global optimization methods such as random or evolutionary structure searching or basin hopping. This is demonstrated by sequential optimization of random gold clu...
A strategy is outlined to reduce the number of training points required to model intermolecular pote...
Abstract All-atom dynamics simulations are an indispensable quantitative tool in physics, chemistry,...
This work fills the gap for a comprehensive reference conveying the developments in global optimizat...
We introduce a method for global optimization of the structure of atomic systems that uses additiona...
Structural characterization of nanoclusters is one of the major challenges in nanocluster modeling o...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
Global Optimization with First-principles Energy Expressions (GOFEE) is an efficient method for iden...
This thesis illustrates the use of machine learning algorithms and exact numerical methods to study ...
We apply an online optimization process based on machine learning to the production of Bose-Einstein...
Statistical learning algorithms are finding more and more applications in science and technology. At...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
Machine learning interatomic potentials (MLIPs) are routinely used atomic simulations, but generatin...
FFLUX is a novel machine-learnt force field using pre-trained Gaussian process regression (GPR) mode...
The potential energy surface of multi-atomic systems encodes important aspects such as thermodynamic...
Interatomic potential (i.e. force-field) plays a vital role in atomistic simulation of materials. Em...
A strategy is outlined to reduce the number of training points required to model intermolecular pote...
Abstract All-atom dynamics simulations are an indispensable quantitative tool in physics, chemistry,...
This work fills the gap for a comprehensive reference conveying the developments in global optimizat...
We introduce a method for global optimization of the structure of atomic systems that uses additiona...
Structural characterization of nanoclusters is one of the major challenges in nanocluster modeling o...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
Global Optimization with First-principles Energy Expressions (GOFEE) is an efficient method for iden...
This thesis illustrates the use of machine learning algorithms and exact numerical methods to study ...
We apply an online optimization process based on machine learning to the production of Bose-Einstein...
Statistical learning algorithms are finding more and more applications in science and technology. At...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
Machine learning interatomic potentials (MLIPs) are routinely used atomic simulations, but generatin...
FFLUX is a novel machine-learnt force field using pre-trained Gaussian process regression (GPR) mode...
The potential energy surface of multi-atomic systems encodes important aspects such as thermodynamic...
Interatomic potential (i.e. force-field) plays a vital role in atomistic simulation of materials. Em...
A strategy is outlined to reduce the number of training points required to model intermolecular pote...
Abstract All-atom dynamics simulations are an indispensable quantitative tool in physics, chemistry,...
This work fills the gap for a comprehensive reference conveying the developments in global optimizat...