Schmidt Jonathan, Benavides-Riveros Carlos L, Marques Miguel A L
Institut für Physik , Martin-Luther-Universität Halle-Wittenberg , 06120 Halle (Saale) , Germany.
J Phys Chem Lett. 2019 Oct 17;10(20):6425-6431. doi: 10.1021/acs.jpclett.9b02422. Epub 2019 Oct 9.
We train a neural network as the universal exchange-correlation functional of density-functional theory that simultaneously reproduces both the exact exchange-correlation energy and the potential. This functional is extremely nonlocal but retains the computational scaling of traditional local or semilocal approximations. It therefore holds the promise of solving some of the delocalization problems that plague density-functional theory, while maintaining the computational efficiency that characterizes the Kohn-Sham equations. Furthermore, by using automatic differentiation, a capability present in modern machine-learning frameworks, we impose the exact mathematical relation between the exchange-correlation energy and the potential, leading to a fully consistent method. We demonstrate the feasibility of our approach by looking at one-dimensional systems with two strongly correlated electrons, where density-functional methods are known to fail, and investigate the behavior and performance of our functional by varying the degree of nonlocality.
我们训练了一个神经网络,将其作为密度泛函理论的通用交换关联泛函,该泛函能同时重现精确的交换关联能量和势。此泛函具有极强的非局域性,但保留了传统局域或半局域近似的计算尺度。因此,它有望解决困扰密度泛函理论的一些离域问题,同时保持科恩 - 沙姆方程所具有的计算效率。此外,通过使用现代机器学习框架中具备的自动微分功能,我们施加了交换关联能量与势之间精确的数学关系,从而得到一种完全自洽的方法。我们通过研究具有两个强关联电子的一维系统来证明我们方法的可行性,在这种情况下密度泛函方法已知会失效,并且通过改变非局域程度来研究我们泛函的行为和性能。