Inclusion of Machine Learning Kernel Ridge Regression Potential Energy Surfaces in On-the-Fly Nonadiabatic Molecular Dynamics Simulation.
暂无分享,去创建一个
Deping Hu | Zhenggang Lan | Yu Xie | D. Hu | Yu Xie | Xusong Li | Lingyue Li | Z. Lan | Xusong Li | Lingyue Li | Deping Hu
[1] Yajun Liu,et al. Benchmark Performance of Global Switching versus Local Switching for Trajectory Surface Hopping Molecular Dynamics Simulation: Cis↔Trans Azobenzene Photoisomerization. , 2017, Chemphyschem : a European journal of chemical physics and physical chemistry.
[2] K. Müller,et al. Fast and accurate modeling of molecular atomization energies with machine learning. , 2011, Physical review letters.
[3] Matthias Rupp,et al. Big Data Meets Quantum Chemistry Approximations: The Δ-Machine Learning Approach. , 2015, Journal of chemical theory and computation.
[4] Hung M. Le,et al. An implementation of the Levenberg–Marquardt algorithm for simultaneous-energy-gradient fitting using two-layer feed-forward neural networks , 2015 .
[5] Joel M. Bowman,et al. Permutationally invariant potential energy surfaces in high dimensionality , 2009 .
[6] M. Rupp,et al. Fourier series of atomic radial distribution functions: A molecular fingerprint for machine learning models of quantum chemical properties , 2013, 1307.2918.
[7] E. Weinan,et al. Deep Potential: a general representation of a many-body potential energy surface , 2017, 1707.01478.
[8] Satish T. S. Bukkapatnam,et al. Neural Networks in Chemical Reaction Dynamics , 2012 .
[9] A. Pukrittayakamee,et al. Simultaneous fitting of a potential-energy surface and its corresponding force fields using feedforward neural networks. , 2009, The Journal of chemical physics.
[10] Le Yu,et al. Trajectory-based nonadiabatic molecular dynamics without calculating nonadiabatic coupling in the avoided crossing case: trans↔cis photoisomerization in azobenzene. , 2014, Physical chemistry chemical physics : PCCP.
[11] Gaël Varoquaux,et al. Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..
[12] Abhinav Vishnu,et al. Deep learning for computational chemistry , 2017, J. Comput. Chem..
[13] Markus Meuwly,et al. Toolkit for the Construction of Reproducing Kernel-Based Representations of Data: Application to Multidimensional Potential Energy Surfaces , 2017, J. Chem. Inf. Model..
[14] Jörg Behler,et al. Constructing high‐dimensional neural network potentials: A tutorial review , 2015 .
[15] Nasser M. Nasrabadi,et al. Pattern Recognition and Machine Learning , 2006, Technometrics.
[16] Matthias Rupp,et al. Machine learning for quantum mechanics in a nutshell , 2015 .
[17] Alán Aspuru-Guzik,et al. Machine learning exciton dynamics , 2015, Chemical science.
[18] Hiroki Nakamura,et al. New implementation of the trajectory surface hopping method with use of the Zhu-Nakamura theory , 2001 .
[19] D. Hu,et al. Nonadiabatic dynamics simulation of keto isocytosine: a comparison of dynamical performance of different electronic-structure methods. , 2017, Physical chemistry chemical physics : PCCP.
[20] J. Behler,et al. Machine learning molecular dynamics for the simulation of infrared spectra , 2017, Chemical science.
[21] Atsuto Seko,et al. Representation of compounds for machine-learning prediction of physical properties , 2016, 1611.08645.
[22] Michael Gastegger,et al. Machine learning molecular dynamics for the simulation of infrared spectra† †Electronic supplementary information (ESI) available. See DOI: 10.1039/c7sc02267k , 2017, Chemical science.
[23] E Weinan,et al. Deep Potential Molecular Dynamics: a scalable model with the accuracy of quantum mechanics , 2017, Physical review letters.
[24] Michele Parrinello,et al. Generalized neural-network representation of high-dimensional potential-energy surfaces. , 2007, Physical review letters.
[25] Joel M. Bowman,et al. High-dimensional ab initio potential energy surfaces for reaction dynamics calculations. , 2011, Physical chemistry chemical physics : PCCP.
[26] K. Müller,et al. Machine Learning Predictions of Molecular Properties: Accurate Many-Body Potentials and Nonlocality in Chemical Space , 2015, The journal of physical chemistry letters.