论文标题
用随机密度功能理论优化结构
Structure Optimization with Stochastic Density Functional Theory
论文作者
论文摘要
Kohn-Sham密度功能理论(KS-DFT)的线性尺度技术对于描述扩展系统的基态特性至关重要。尽管如此,这些技术通常依赖于密度矩阵的局部性或准确的嵌入方法,从而限制了它们的适用性。相反,随机密度功能理论(SDFT)通过统计上对基态密度采样而无需依赖嵌入或施加定位,从而实现线性和亚线性缩放。作为回报,基态可观察物,例如核上的力,在SDFT中波动,使核结构的优化成为高度不平凡的问题。在这项工作中,我们将SDFT的最新降噪方案与随机优化算法相结合,以在SDFT中执行结构优化。我们将随机梯度下降(SGD)方法的性能及其变化(随机梯度下降与动量(SGDM))与依赖于Hessian的随机优化技术,例如随机的Broyden-fletcher-fletcher-fletcher-fletcher-goldfarb-Shanno(SBFGS)Algorithm。我们进一步提供了对计算效率的详细评估及其对用不同超级电池尺寸确定散装硅基态结构的每种方法的优化参数的依赖性。
Linear-scaling techniques for Kohn-Sham density functional theory (KS-DFT) are essential to describe the ground state properties of extended systems. Still, these techniques often rely on the locality of the density matrix or on accurate embedding approaches, limiting their applicability. In contrast, stochastic density functional theory (sDFT) achieves linear- and sub-linear-scaling by statistically sampling the ground state density without relying on embedding or imposing localization. In return, ground state observables, such as the forces on the nuclei, fluctuate in sDFT, making the optimization of the nuclear structure a highly non-trivial problem. In this work, we combine the most recent noise-reduction schemes for sDFT with stochastic optimization algorithms to perform structure optimization within sDFT. We compare the performance of the stochastic gradient descent (sGD) approach and its variations (stochastic gradient descent with momentum (sGDM)) to stochastic optimization techniques that rely on the Hessian, such as the stochastic Broyden-Fletcher-Goldfarb-Shanno (sBFGS) algorithm. We further provide a detailed assessment of the computational efficiency and its dependence on the optimization parameters for each methods for determining the ground state structure of bulk silicon with varying supercell dimensions.