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Efficient linear-scaling quantum transport calculations on graphics processing units and applications on electron transport in graphene

机译:图形处理单元上的高效线性比例量子传输计算及其在石墨烯中电子传输中的应用

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We implement, optimize, and validate the linear-scaling Kubo-Greenwood quantum transport simulation on graphics processing units by examining resonant scattering in graphene. We consider two practical representations of the Kubo-Greenwood formula: a Green-Kubo formula based on the velocity auto-correlation and an Einstein formula based on the mean square displacement. The code is fully implemented on graphics processing units with a speedup factor of up to 16 (using double-precision) relative to our CPU implementation. We compare the kernel polynomial method and the Fourier transform method for the approximation of the Dirac delta function and conclude that the former is more efficient. In the ballistic regime, the Einstein formula can produce the correct quantized conductance of one-dimensional graphene nanoribbons except for an overshoot near the band edges. In the diffusive regime, the Green-Kubo and the Einstein formalisms are demonstrated to be equivalent. A comparison of the length-dependence of the conductance in the localization regime obtained by the Einstein formula with that obtained by the non-equilibrium Green's function method reveals the challenges in defining the length in the Kubo-Greenwood formalism at the strongly localized regime.
机译:通过检查石墨烯中的共振散射,我们在图形处理单元上实现,优化和验证了线性缩放的Kubo-Greenwood量子传输模拟。我们考虑了Kubo-Greenwood公式的两种实用表示形式:基于速度自相关的Green-Kubo公式和基于均方位移的Einstein公式。该代码完全在图形处理单元上实现,相对于我们的CPU实现,加速因子高达16(使用双精度)。我们比较了核多项式方法和傅立叶变换方法对Dirac delta函数的逼近,并得出结论,前者效率更高。在弹道状态下,爱因斯坦公式可以产生一维石墨烯纳米带的正确量化电导,除了能带边缘附近的过冲。在扩散体制中,格林-久保和爱因斯坦形式主义被证明是等效的。通过爱因斯坦公式获得的电导的长度依赖性与通过非平衡格林函数方法获得的电导的长度依赖性的比较,揭示了在强局部化条件下定义久保-格林伍德形式主义中的电导率的挑战。

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