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Automatically growing global reactive neural network potential energy surfaces: A trajectory-free active learning strategy

Qidong Lin, Yaolong Zhang, Bin Zhao, Bin Jiang

2020The Journal of Chemical Physics56 citationsDOIOpen Access PDF

Abstract

An efficient and trajectory-free active learning method is proposed to automatically sample data points for constructing globally accurate reactive potential energy surfaces (PESs) using neural networks (NNs). Although NNs do not provide the predictive variance as the Gaussian process regression does, we can alternatively minimize the negative of the squared difference surface (NSDS) given by two different NN models to actively locate the point where the PES is least confident. A batch of points in the minima of this NSDS can be iteratively added into the training set to improve the PES. The configuration space is gradually and globally covered without the need to run classical trajectory (or equivalently molecular dynamics) simulations. Through refitting the available analytical PESs of H3 and OH3 reactive systems, we demonstrate the efficiency and robustness of this new strategy, which enables fast convergence of the reactive PESs with respect to the number of points in terms of quantum scattering probabilities.

Topics & Concepts

Maxima and minimaArtificial neural networkRobustness (evolution)Computer scienceGaussian processConvergence (economics)Artificial intelligenceTrajectoryAC powerMathematical optimizationEnergy (signal processing)AlgorithmMachine learningSet (abstract data type)Data pointProcess (computing)GaussianActive learning (machine learning)RegressionPotential energyTraining setSupervised learningQuantumPoint (geometry)Efficient energy useDeep learningPotential energy surfaceSupport vector machineActive visionStationary pointData setFeature (linguistics)Variance (accounting)Machine Learning in Materials ScienceGaussian Processes and Bayesian InferenceAdvanced Chemical Physics Studies
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