Citation: Xintian Xie,  Sicong Ma,  Yefei Li,  Cheng Shang,  Zhipan Liu. Application of Machine Learning Potential-based Theoretical Simulations in Undergraduate Teaching Laboratory Course Design[J]. University Chemistry, ;2025, 40(3): 140-147. doi: 10.12461/PKU.DXHX202405164 shu

Application of Machine Learning Potential-based Theoretical Simulations in Undergraduate Teaching Laboratory Course Design

  • Corresponding author: Zhipan Liu, zpliu@fudan.edu.cn
  • Received Date: 27 May 2024
    Revised Date: 14 August 2024

  • Integrating theoretical simulation courses into undergraduate education for chemistry and materials science is of great significance for cultivating modern chemistry talents. Using the simulation methods and software developed by our research group, we designed two simulation experiments: "Construction of the Potential Energy Surface for H2 Dissociation on the Cu(111) Surface" and "Characterization and Simulation of Acidity on Zeolite Molecular Sieve Surfaces". These experiments aim to deepen the undergraduates’ comprehension of theoretical simulations and highlight the transformative advancements driven by artificial intelligence technology.
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