论文标题
通过神经网络近似物理系统的基态能量和波浪函数
Approximating Ground State Energies and Wave Functions of Physical Systems with Neural Networks
论文作者
论文摘要
量子理论在提供基础量表的物理系统方面非常成功。求解schrödinger方程提供了所有动力学数量的全部知识。但是,该方程式的封闭形式解决方案仅适用于一些系统,并且通常使用近似方法来查找解决方案。在本文中,我们解决了解决物理系统基态解决方案的时间独立schrödinger方程的问题。我们建议在差异优化方案中使用端到端的深度学习方法来近似这些系统的基态能量和波浪函数。神经网络实现了通用的试验波函数,并通过优化物理系统的哈密顿量的期望值在无监督的学习框架中进行了训练。对所提出的方法进行了评估,该方法由带有和不扰动的盒子中的粒子组成的物理系统进行评估。我们证明我们的方法获得了高度准确的基态能量和波函数的近似值,这使其成为解决更复杂的物理系统的潜在合理候选者,分析解决方案无法实现。
Quantum theory has been remarkably successful in providing an understanding of physical systems at foundational scales. Solving the Schrödinger equation provides full knowledge of all dynamical quantities of the physical system. However closed form solutions to this equation are only available for a few systems and approximation methods are typically used to find solutions. In this paper we address the problem of solving the time independent Schrödinger equation for the ground state solution of physical systems. We propose using end-to-end deep learning approach in a variational optimization scheme for approximating the ground state energies and wave functions of these systems. A neural network realizes a universal trial wave function and is trained in an unsupervised learning framework by optimizing the expectation value of the Hamiltonian of a physical system. The proposed approach is evaluated on physical systems consisting of a particle in a box with and without a perturbation. We demonstrate that our approach obtains approximations of ground state energies and wave functions that are highly accurate, which makes it a potentially plausible candidate for solving more complex physical systems for which analytical solutions are beyond reach.