论文标题
超越潜力:材料的集成机器学习模型
Beyond potentials: integrated machine-learning models for materials
论文作者
论文摘要
在过去的十年中,基于机器学习(ML)技术的原子间电位已成为材料原子规模建模中必不可少的工具。经过从电子结构计算获得的能量和力训练,它们继承了其预测精度,并大大扩展了可访问的长度和时间尺度,这些长度和时间尺度可访问以明确的原子模拟。对单个配置的能量学的廉价预测已经极大地促进了材料热力学的计算,包括有限的温度效应和混乱。最近,机器学习模型一直在另一个领域的第一原理计算缩小差距:从振动和光谱镜到电子激发的任意复杂功能性能的预测。将能量和功能性预测与原子尺度属性的统计和动力学采样相结合的集成机器学习模型的实施,使对现有材料的预测性,毫不妥协的模拟有望接近其完整实现。
Over the past decade inter-atomic potentials based on machine-learning (ML) techniques have become an indispensable tool in the atomic-scale modeling of materials. Trained on energies and forces obtained from electronic-structure calculations, they inherit their predictive accuracy, and extend greatly the length and time scales that are accessible to explicit atomistic simulations. Inexpensive predictions of the energetics of individual configurations have facilitated greatly the calculation of the thermodynamics of materials, including finite-temperature effects and disorder. More recently, machine-learning models have been closing the gap with first-principles calculations in another area: the prediction of arbitrarily complicated functional properties, from vibrational and optical spectroscopies to electronic excitations. The implementation of integrated machine-learning models, that combine energetic and functional predictions with statistical and dynamical sampling of atomic-scale properties is bringing the promise of predictive, uncompromising simulations of existing and novel materials closer to its full realisation.