论文标题
部分可观测时空混沌系统的无模型预测
Machine learning approach to genome of two-dimensional materials with flat electronic bands
论文作者
论文摘要
电子电子相关性的多体物理学在凝结的孕妇物理学中起着核心作用,它控制着广泛的现象,从超导性到磁性延伸到磁性,并且是众多技术应用的背后。为了探索这种丰富的相互作用驱动的物理,二维(2D)材料具有平坦的电子带,因此可以通过高度局部的电子来提供自然的游乐场。当前,开放科学数据库中有数千种具有计算电子带的2D材料,等待着这种探索。在这里,我们使用了一种新的机器学习算法,该算法结合了监督和无监督的机器智能,以使原本艰巨的材料搜索和分类任务自动化,以构建托管平面电子带的2D材料的基因组。为此,采用了一个前馈性人工神经网络来识别2D平面材料,然后由双层无监督的学习算法对其进行分类。这种探索材料数据库的混合方法使我们能够在已知的平面范式之外揭示全新的材料类别,从而为他们的电子相互作用提供了新的系统。
Many-body physics of electron-electron correlations plays a central role in condensed mater physics, it governs a wide range of phenomena, stretching from superconductivity to magnetism, and is behind numerous technological applications. To explore this rich interaction-driven physics, two-dimensional (2D) materials with flat electronic bands provide a natural playground thanks to their highly localised electrons. Currently, thousands of 2D materials with computed electronic bands are available in open science databases, awaiting such exploration. Here we used a new machine learning algorithm combining both supervised and unsupervised machine intelligence to automate the otherwise daunting task of materials search and classification, to build a genome of 2D materials hosting flat electronic bands. To this end, a feedforward artificial neural network was employed to identify 2D flat band materials, which were then classified by a bilayer unsupervised learning algorithm. Such a hybrid approach of exploring materials databases allowed us to reveal completely new material classes outside the known flat band paradigms, offering new systems for in-depth study on their electronic interactions.