4.8 Article

Deep-Learning Approach to First-Principles Transport Simulations

期刊

PHYSICAL REVIEW LETTERS
卷 126, 期 17, 页码 -

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AMER PHYSICAL SOC
DOI: 10.1103/PhysRevLett.126.177701

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  1. New Energy and Industrial Technology Development Organization of Japan (NEDO) Grant [JPNP16010]

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The study combines first-principles transport calculations with machine learning-based regression, using local descriptors for deep learning, to predict the conductance of large systems beyond current first-principles algorithms, achieving qualitative agreement with experimental results at a fraction of the computational effort.
Large-scale first-principles transport calculations, while essential for device modeling, remain computationally demanding. To overcome this bottle neck, we combine first-principles transport calculations with machine learning-based nonlinear regression. We calculate the electronic conductance through first-principles based nonequilibrium Green's function techniques for small systems and map the transport properties onto local properties using local descriptors. We show that using the local descriptor as input features for deep learning-based nonlinear regression allows us to build a robust neural network that can predict the conductance of large systems beyond that of the current state-of-the-art first-principles calculation algorithms. Our protocol is applied to alkali metal nanowires, i.e., potassium, which have unique geometrical and electronic properties and hence nontrivial transport properties. We demonstrate that within our approach we can achieve qualitative agreement with experiment at a fraction of the computational effort as compared to the direct calculation of the transport properties using conventional first-principles methods.

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