The saddle point (SP) calculation is a grand challenge for computationally intensive energy function in computational chemistry area, where the saddle point may represent the transition state (TS). The traditional methods need to evaluate the gradients of the energy function at a very large number of locations. To reduce the number of expensive computations of the true gradients, we propose an active learning framework consisting of a statistical surrogate model, Gaussian process regression (GPR) for the energy function, and a single-walker dynamics method, gentle accent dynamics (GAD), for the saddle-type transition states. SP is detected by the GAD applied to the GPR surrogate for the gradient vector and the Hessian matrix. Our key ingred...
In superstructure optimization of processes and energy systems, the design space is defined as the c...
A review of saddle point search methods on a potential energy surface is presented in this paper. Fi...
A strategy is outlined to reduce the number of training points required to model intermolecular pote...
Three active learning schemes are used to generate training data for Gaussian process interpolation ...
Gaussian process regression (GPR) is an efficient non-parametric method for constructing multi-dimen...
Several pool-based active learning (AL) algorithms were employed to model potential-energy surfaces ...
Saddle point search schemes are widely used to identify the transition state of different processes,...
The minimum mode following method can be used to find saddle points on an energy surface by followin...
Active Learning (AL) is a methodology from Machine Learning and Design of Experiments (DOE) in which...
A fundamental issue in active learning of Gaussian processes is that of the exploration-exploitation...
We present a new program implementation of the Gaussian process regression adaptive density-guided a...
The system of ordinary differential equations for the method of the gentlest ascent dynamics (GAD) i...
Many problems in biology, chemistry, and materials science require knowledge of saddle points on fre...
An important task in many scientific and engineering disciplines is to set up experiments with the g...
The field of Machine Learning is concerned with the development of algorithms, models and techniques...
In superstructure optimization of processes and energy systems, the design space is defined as the c...
A review of saddle point search methods on a potential energy surface is presented in this paper. Fi...
A strategy is outlined to reduce the number of training points required to model intermolecular pote...
Three active learning schemes are used to generate training data for Gaussian process interpolation ...
Gaussian process regression (GPR) is an efficient non-parametric method for constructing multi-dimen...
Several pool-based active learning (AL) algorithms were employed to model potential-energy surfaces ...
Saddle point search schemes are widely used to identify the transition state of different processes,...
The minimum mode following method can be used to find saddle points on an energy surface by followin...
Active Learning (AL) is a methodology from Machine Learning and Design of Experiments (DOE) in which...
A fundamental issue in active learning of Gaussian processes is that of the exploration-exploitation...
We present a new program implementation of the Gaussian process regression adaptive density-guided a...
The system of ordinary differential equations for the method of the gentlest ascent dynamics (GAD) i...
Many problems in biology, chemistry, and materials science require knowledge of saddle points on fre...
An important task in many scientific and engineering disciplines is to set up experiments with the g...
The field of Machine Learning is concerned with the development of algorithms, models and techniques...
In superstructure optimization of processes and energy systems, the design space is defined as the c...
A review of saddle point search methods on a potential energy surface is presented in this paper. Fi...
A strategy is outlined to reduce the number of training points required to model intermolecular pote...