A Differentiable Neural-Network Force Field for Ionic Liquids
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[1] K. Mankia,et al. Validation , 2020, The International Encyclopedia of Media Psychology.
[2] David T. Limmer,et al. Learning intermolecular forces at liquid-vapor interfaces. , 2021, The Journal of chemical physics.
[3] Mehrnaz Amjadi,et al. Boosted Embeddings for Time Series Forecasting , 2021, LOD.
[4] J. Behler. Four Generations of High-Dimensional Neural Network Potentials. , 2021, Chemical reviews.
[5] Zhenmin Cheng,et al. Thermal Stability of Ionic Liquids: Current Status and Prospects for Future Development , 2021, Processes.
[6] Jonathan P. Mailoa,et al. E(3)-equivariant graph neural networks for data-efficient and accurate interatomic potentials , 2021, Nature Communications.
[7] Seungwu Han,et al. High-dimensional neural network atomic potentials for examining energy materials: some recent simulations , 2020, Journal of Physics: Energy.
[8] A. Ribeiro,et al. Application of Ionic Liquids in Electrochemistry—Recent Advances , 2020, Molecules.
[9] Stefan Goedecker,et al. A fourth-generation high-dimensional neural network potential with accurate electrostatics including non-local charge transfer , 2020, Nature Communications.
[10] Justin S. Smith,et al. TorchANI: A Free and Open Source PyTorch-Based Deep Learning Implementation of the ANI Neural Network Potentials , 2020, J. Chem. Inf. Model..
[11] Qi Wang,et al. A Comprehensive Survey of Loss Functions in Machine Learning , 2020, Annals of Data Science.
[12] April M. Cooper,et al. Efficient training of ANN potentials by including atomic forces via Taylor expansion and application to water and a transition-metal oxide , 2020, npj Computational Materials.
[13] Glenn Fung,et al. Task-Optimized Word Embeddings for Text Classification Representations , 2020, Frontiers in Applied Mathematics and Statistics.
[14] Balaji Lakshminarayanan,et al. Deep Ensembles: A Loss Landscape Perspective , 2019, ArXiv.
[15] Stefano Mossa,et al. Anharmonic thermodynamics of vacancies using a neural network potential , 2019, Physical Review Materials.
[16] M. Ceriotti,et al. Incorporating long-range physics in atomic-scale machine learning. , 2019, The Journal of chemical physics.
[17] M. T. B. Geller,et al. Molecular , 2019, Modern Pathology.
[18] R. Reis,et al. Biocompatible ionic liquids: fundamental behaviours and applications. , 2019, Chemical Society reviews.
[19] Hakan Erturk,et al. Continuous and optimally complete description of chemical environments using Spherical Bessel descriptors , 2019, AIP Advances.
[20] Brandon M. Anderson,et al. Cormorant: Covariant Molecular Neural Networks , 2019, NeurIPS.
[21] M. Spivak. Calculus On Manifolds: A Modern Approach To Classical Theorems Of Advanced Calculus , 2019 .
[22] Christoph Dellago,et al. Parallel Multistream Training of High-Dimensional Neural Network Potentials. , 2019, Journal of chemical theory and computation.
[23] William A. Goddard,et al. Density functional theory based neural network force fields from energy decompositions , 2019, Physical Review B.
[24] Michael A. Osborne,et al. On the Limitations of Representing Functions on Sets , 2019, ICML.
[25] Niall J. English,et al. Ab Initio Molecular Dynamics Studies of the Effect of Solvation by Room-Temperature Ionic Liquids on the Vibrational Properties of a N719-Chromophore/Titania Interface , 2018, The Journal of Physical Chemistry C.
[26] Iuliia V. Voroshylova,et al. Influence of the anion on the properties of ionic liquid mixtures: a molecular dynamics study. , 2018, Physical chemistry chemical physics : PCCP.
[27] Leslie N. Smith,et al. A disciplined approach to neural network hyper-parameters: Part 1 - learning rate, batch size, momentum, and weight decay , 2018, ArXiv.
[28] K-R Müller,et al. SchNet - A deep learning architecture for molecules and materials. , 2017, The Journal of chemical physics.
[29] V. Avrutskiy. Enhancing Function Approximation Abilities of Neural Networks by Training Derivatives , 2017, IEEE Transactions on Neural Networks and Learning Systems.
[30] D. Macfarlane,et al. Fundamentals of Ionic Liquids: From Chemistry to Applications , 2017 .
[31] Michael Walter,et al. The atomic simulation environment-a Python library for working with atoms. , 2017, Journal of physics. Condensed matter : an Institute of Physics journal.
[32] Sepp Hochreiter,et al. Self-Normalizing Neural Networks , 2017, NIPS.
[33] S. Goedecker,et al. High accuracy and transferability of a neural network potential through charge equilibration for calcium fluoride , 2017 .
[34] Alexander J. Smola,et al. Deep Sets , 2017, 1703.06114.
[35] Nathan Oken Hodas,et al. Deep learning for computational chemistry , 2017, J. Comput. Chem..
[36] L. M. Varela,et al. Molecular dynamics analysis of the effect of electronic polarization on the structure and single-particle dynamics of mixtures of ionic liquids and lithium salts. , 2016, The Journal of chemical physics.
[37] J S Smith,et al. ANI-1: an extensible neural network potential with DFT accuracy at force field computational cost , 2016, Chemical science.
[38] Geoffrey E. Hinton,et al. Layer Normalization , 2016, ArXiv.
[39] Xiangshu Chen,et al. Molecular dynamics simulations of temperature-dependent structures and dynamics of ethylammonium nitrate protic ionic liquid: The role of hydrogen bond , 2016 .
[40] Sudhir B. Kylasa,et al. The ReaxFF reactive force-field: development, applications and future directions , 2016 .
[41] Jörg Behler,et al. Constructing high‐dimensional neural network potentials: A tutorial review , 2015 .
[42] B. Coasne,et al. Structure and Dynamics of Ionic Liquids Confined in Amorphous Porous Chalcogenides. , 2015, Langmuir : the ACS journal of surfaces and colloids.
[43] A. Heuer,et al. Comparing induced point-dipoles and Drude oscillators. , 2015, Physical chemistry chemical physics : PCCP.
[44] Barak A. Pearlmutter,et al. Automatic differentiation in machine learning: a survey , 2015, J. Mach. Learn. Res..
[45] Gábor Csányi,et al. Gaussian approximation potentials: A brief tutorial introduction , 2015, 1502.01366.
[46] Stefan Goedecker,et al. Interatomic potentials for ionic systems with density functional accuracy based on charge densities obtained by a neural network , 2015, 1501.07344.
[47] Jimmy Ba,et al. Adam: A Method for Stochastic Optimization , 2014, ICLR.
[48] L. M. Varela,et al. Mixtures of protic ionic liquids and molecular cosolvents: a molecular dynamics simulation. , 2014, The Journal of chemical physics.
[49] R. Kondor,et al. On representing chemical environments , 2012, 1209.3140.
[50] H. Ohno,et al. Ionic liquid/water mixtures: from hostility to conciliation. , 2012, Chemical communications.
[51] L. M. Varela,et al. Molecular dynamics simulations of the structural and thermodynamic properties of imidazolium-based ionic liquid mixtures. , 2011, The journal of physical chemistry. B.
[52] J. Behler. Atom-centered symmetry functions for constructing high-dimensional neural network potentials. , 2011, The Journal of chemical physics.
[53] N. A. Romero,et al. Electronic structure calculations with GPAW: a real-space implementation of the projector augmented-wave method , 2010, Journal of physics. Condensed matter : an Institute of Physics journal.
[54] Jinghong Li,et al. Ionic liquids in surface electrochemistry. , 2010, Physical chemistry chemical physics : PCCP.
[55] Kristian Sommer Thygesen,et al. Localized atomic basis set in the projector augmented wave method , 2009, 1303.0348.
[56] R. Lynden-Bell,et al. Simulations of imidazolium ionic liquids: when does the cation charge distribution matter? , 2009, Journal of physics. Condensed matter : an Institute of Physics journal.
[57] Orlando Acevedo,et al. Development of OPLS-AA Force Field Parameters for 68 Unique Ionic Liquids. , 2009, Journal of chemical theory and computation.
[58] Ralf Ludwig,et al. Molecular dynamic simulations of ionic liquids: a reliable description of structure, thermodynamics and dynamics. , 2007, Chemphyschem : a European journal of chemical physics and physical chemistry.
[59] Younes Ansari,et al. Ab initio molecular dynamics simulation of ionic liquids. , 2007, The Journal of chemical physics.
[60] Gerrit Groenhof,et al. GROMACS: Fast, flexible, and free , 2005, J. Comput. Chem..
[61] K. Jacobsen,et al. Real-space grid implementation of the projector augmented wave method , 2004, cond-mat/0411218.
[62] Robin D. Rogers,et al. Ionic Liquids--Solvents of the Future? , 2003, Science.
[63] W. L. Jorgensen,et al. Development and Testing of the OPLS All-Atom Force Field on Conformational Energetics and Properties of Organic Liquids , 1996 .
[64] T. Darden,et al. A smooth particle mesh Ewald method , 1995 .
[65] W. Goddard,et al. Charge equilibration for molecular dynamics simulations , 1991 .
[66] Quoc V. Le,et al. Searching for Activation Functions , 2018, arXiv.
[67] A. Filippov. Self-Diffusion and Microstructure of Some Ionic Liquids in Bulk and in Confinement , 2016 .
[68] Inamuddin,et al. Green Solvents II: Properties and Applications of Ionic Liquids , 2012 .
[69] Shadpour Mallakpour,et al. Ionic Liquids as Green Solvents: Progress and Prospects , 2012 .
[70] M. Vanin. Localized Atomic Orbital Basis Sets in the Projector Augmented Wave Method , 2008 .
[71] L. Breiman. Random Forests , 2001, Machine Learning.