Corpus ID: 220769017

Accelerating Atomistic Simulations with Piecewise Machine Learned Ab Initio Potentials at Classical Force Field-like Cost

@inproceedings{Zhang2020AcceleratingAS,
  title={Accelerating Atomistic Simulations with Piecewise Machine Learned Ab Initio Potentials at Classical Force Field-like Cost},
  author={Yao-long Zhang and Ce Hu and Bin Jiang},
  year={2020}
}
  • Yao-long Zhang, Ce Hu, Bin Jiang
  • Published 2020
  • Physics
  • Accelerating Atomistic Simulations with Piecewise Machine Learned Ab Initio Potentials at Classical Force Field-like Cost Yaolong Zhang, Ce Hu, and Bin Jiang Hefei National Laboratory for Physical Science at the Microscale, Key Laboratory of Surface and Interface Chemistry and Energy Catalysis of Anhui Higher Education Institutes, Department of Chemical Physics, University of Science and Technology of China, Hefei, Anhui 230026, China 

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