论文标题
带有神经网络的蛇网和气球力,用于检测多个阶段
Snake net and balloon force with a neural network for detecting multiple phases
论文作者
论文摘要
无监督的机器学习应用于相变研究是一个持续而有趣的研究方向。最初提出了在二维图像中提取目标轮廓的活动轮廓模型,也称为蛇模型。为了获得物理相图,[phys.rev.lett的作者。 120,176401(2018)]。它猜测相边界是初始蛇,然后驱动蛇与人工神经网络估计的力收敛。在本文中,我们将这种无监督的学习方法用一种轮廓扩展到具有多个轮廓的蛇网,目的是在相图中获得多个相位边界。对于经典的Blume-Capel模型,获得了包含三个和四个相的相图。此外,为了克服初始位置的局限性并加快了蛇的运动的速度,引入了迭代步骤的气球力衰减,并将其应用于蛇网结构。我们的方法有助于使用多个阶段确定相图,仅使用冷原子或其他实验的构型快照而不了解相位。
Unsupervised machine learning applied to the study of phase transitions is an ongoing and interesting research direction. The active contour model, also called the snake model, was initially proposed for target contour extraction in two-dimensional images. In order to obtain a physical phase diagram, the snake model with an artificial neural network is applied in an unsupervised learning way by the authors of [Phys.Rev.Lett. 120, 176401(2018)]. It guesses the phase boundary as an initial snake and then drives the snake to convergence with forces estimated by the artificial neural network. In this paper, we extend this unsupervised learning method with one contour to a snake net with multiple contours for the purpose of obtaining several phase boundaries in a phase diagram. For the classical Blume-Capel model, the phase diagram containing three and four phases is obtained. Moreover, to overcome the limitations of the initial position and speed up the movement of the snake, the balloon force decaying with the iteration steps is introduced and applied to the snake net structure. Our method is helpful in determining the phase diagram with multiple phases, using just snapshots of configurations from cold atoms or other experiments without knowledge of the phases.