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Development of Neural-Network Interatomic Potentials for Structural Materials

机译:结构材料的神经网络原子间电势的发展

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The validity of the molecular dynamics (MD) simulation is highly dependent on the accuracy or reproducibility of interatomic potentials used in the MD simulation. The neural-network (NN) interatomic potential is one of promising interatomic potentials based on machine-learning method. However, there are some parameters that should be determined heuristically before making the NN potential, such as the shape and number of basis functions. We have developed a new approach to select only relevant basis functions from a lot of candidates systematically and less heuristically without loosing the accuracy of the potential. The present NN potential for Si system shows very good agreements with the results obtained using ab-initio calculations.
机译:分子动力学(MD)模拟的有效性高度依赖于MD模拟中使用的原子间电势的准确性或可重复性。神经网络原子间电势是一种基于机器学习方法的有前途的原子间电势。但是,在产生NN电位之前,应试探性地确定一些参数,例如基函数的形状和数量。我们已经开发出一种新方法,可以从很多候选人中系统地选择相关的基函数,而不会试探性地选择它们,而不会降低潜力的准确性。 Si系统的当前NN潜力与使用ab-initio计算获得的结果非常吻合。

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