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Thermodynamics of solids including anharmonicity through quasiparticle theory 通过准粒子理论研究包括非谐波性在内的固体热力学
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-22 DOI: 10.1038/s41524-024-01447-8
Ernesto J. Blancas, Álvaro Lobato, Fernando Izquierdo-Ruiz, Antonio M. Márquez, J. Manuel Recio, Pinku Nath, José J. Plata, Alberto Otero-de-la-Roza

The quasiharmonic approximation (QHA) in combination with density-functional theory is the main computational method used to calculate thermodynamic properties under arbitrary temperature and pressure conditions. QHA can predict thermodynamic phase diagrams, elastic properties and temperature- and pressure-dependent equilibrium geometries, all of which are important in various fields of knowledge. The main drawbacks of QHA are that it makes spurious predictions for the volume and other properties in the high temperature limit due to its approximate treatment of anharmonicity, and that it is unable to model dynamically stabilized structures. In this work, we propose an extension to QHA that fixes these problems. Our approach is based on four ingredients: (i) the calculation of the n-th order force constants using randomly displaced configurations and regularized regression, (ii) the calculation of temperature-dependent effective harmonic frequencies ω(V, T) within the self-consistent harmonic approximation (SCHA), (iii) Allen’s quasiparticle (QP) theory, which allows the calculation of the anharmonic entropy from the effective frequencies, and (iv) a simple Debye-like numerical model that enables the calculation of all other thermodynamic properties from the QP entropies. The proposed method is conceptually simple, with a computational complexity similar to QHA but requiring more supercell calculations. It allows incorporating anharmonic effects to any order. The predictions of the new method coincide with QHA in the low-temperature limit and eliminate the QHA blowout at high temperature, recovering the experimentally observed behavior of all thermodynamic properties tested. The performance of the new method is demonstrated by calculating the thermodynamic properties of geologically relevant minerals MgO and CaO. In addition, using cubic SrTiO3 as an example, we show that, unlike QHA, our method can also predict thermodynamic properties of dynamically stabilized phases. We expect this new method to be an important tool in geochemistry and materials discovery.

准谐波近似(QHA)与密度函数理论相结合,是用于计算任意温度和压力条件下热力学性质的主要计算方法。QHA 可以预测热力学相图、弹性特性以及与温度和压力相关的平衡几何形状,所有这些在各个知识领域都非常重要。QHA 的主要缺点是,由于其对非谐波性的近似处理,它对高温极限下的体积和其他性质的预测是虚假的,而且它无法为动态稳定结构建模。在这项工作中,我们提出了 QHA 的扩展方案,以解决这些问题。我们的方法基于四个要素:(i) 使用随机位移构型和正则化回归计算 n 阶力常数,(ii) 在自洽谐波近似(SCHA)中计算与温度相关的有效谐波频率 ω(V, T)、(iii) 艾伦的准粒子(QP)理论,可根据有效频率计算非谐波熵;以及 (iv) 类似 Debye 的简单数值模型,可根据 QP 熵计算所有其他热力学性质。所提出的方法概念简单,计算复杂度与 QHA 相似,但需要更多的超胞计算。它允许将非谐波效应纳入任何阶次。新方法的预测结果在低温极限与 QHA 相吻合,并消除了 QHA 在高温下的井喷现象,恢复了所有测试热力学性质的实验观察行为。通过计算地质相关矿物氧化镁和氧化钙的热力学性质,证明了新方法的性能。此外,我们还以立方体 SrTiO3 为例,说明与 QHA 不同,我们的方法也能预测动态稳定相的热力学性质。我们期待这一新方法成为地球化学和材料发现领域的重要工具。
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引用次数: 0
Exhaustive search for novel multicomponent alloys with brute force and machine learning 用蛮力和机器学习彻底搜索新型多组分合金
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-22 DOI: 10.1038/s41524-024-01452-x
Viktoriia Zinkovich, Vadim Sotskov, Alexander Shapeev, Evgeny Podryabinkin

We present an algorithm for the high-throughput computational discovery of intermetallic compounds in systems with a large number of components. It is particularly important for high entropy alloys (HEAs), where multiple principal elements can form numerous potential intermetallic compounds during the condensation process, making it challenging to predict the dominant phase. Our algorithm is based on a brute-force evaluation of candidate structures with a fixed underlying lattice (FCC or BCC) accelerated by machine-learning interatomic potentials. The algorithm takes a set of chemical elements and a crystal lattice type as inputs and produces structures on and near the convex hull of thermodynamically stable structures. The candidate structures are evaluated using the low-rank potential (LRP), trained to reproduce energies of structures equilibrated with density functional theory (DFT). Thanks to extreme computational effectiveness of the LRP, it is feasible to evaluate hundreds of thousands of structures per second, per CPU core. Thus, our algorithm screens a complete set of candidate structures for a given system without missing any configurations. We validated our method on systems with BCC (Nb-W, Nb-Mo-W, V-Nb-Mo-Ta-W) and FCC (Cu-Pt, Cu-Pd-Pt, Cu-Pd-Ag-Pt-Au) lattices and discovered 268 new alloys not reported in the AFLOW database1, which we used as a benchmark.

我们提出了一种高通量计算发现具有大量成分的系统中金属间化合物的算法。这对于高熵合金 (HEA) 尤为重要,因为在高熵合金中,多种主要元素在缩合过程中会形成许多潜在的金属间化合物,这使得预测主要相位变得十分困难。我们的算法基于对具有固定底层晶格(FCC 或 BCC)的候选结构的粗暴评估,并通过机器学习原子间势能进行加速。该算法将一组化学元素和一种晶格类型作为输入,生成热力学稳定结构凸壳上和凸壳附近的结构。候选结构使用低秩势能(LRP)进行评估,该势能经过训练,可以重现用密度泛函理论(DFT)平衡后的结构能量。由于 LRP 的计算效率极高,因此每秒每个 CPU 内核可以评估数十万个结构。因此,我们的算法可以为给定系统筛选出一套完整的候选结构,而不会遗漏任何配置。我们在 BCC(Nb-W、Nb-Mo-W、V-Nb-Mo-Ta-W)和 FCC(Cu-Pt、Cu-Pd-Pt、Cu-Pd-Ag-Pt-Au)晶格的系统上验证了我们的方法,并发现了 268 种 AFLOW 数据库1 中未报告的新合金,我们将其作为基准。
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引用次数: 0
Neural network potential for dislocation plasticity in ceramics 陶瓷中位错塑性的神经网络潜力
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-22 DOI: 10.1038/s41524-024-01456-7
Shihao Zhang, Yan Li, Shuntaro Suzuki, Atsutomo Nakamura, Shigenobu Ogata

Dislocations in ceramics are increasingly recognized for their promising potential in applications such as toughening intrinsically brittle ceramics and tailoring functional properties. However, the atomistic simulation of dislocation plasticity in ceramics remains challenging due to the complex interatomic interactions characteristic of ceramics, which include a mix of ionic and covalent bonds, and highly distorted and extensive dislocation core structures within complex crystal structures. These complexities exceed the capabilities of empirical interatomic potentials. Therefore, constructing neural network potentials (NNPs) emerges as the optimal solution. Yet, creating a training dataset that includes dislocation structures proves difficult due to the complexity of their core configurations in ceramics and the computational demands of density functional theory for large atomic models containing dislocation cores. In this work, we propose a training dataset from properties that are easier to compute via high-throughput calculation. Using this dataset, we have successfully developed NNPs for dislocation plasticity in ceramics, specifically for three typical functional ceramics: ZnO, GaN, and SrTiO3. These NNPs effectively capture the nonstoichiometric and charged core structures and slip barriers of dislocations, as well as the long-range electrostatic interactions between charged dislocations. The effectiveness of this dataset was further validated by measuring the similarity and uncertainty across snapshots derived from large-scale simulations, alongside extensive validation across various properties. Utilizing the constructed NNPs, we examined dislocation plasticity in ceramics through nanopillar compression and nanoindentation, which demonstrated excellent agreement with experimental observations. This study provides an effective framework for constructing NNPs that enable the detailed atomistic modeling of dislocation plasticity, opening new avenues for exploring the plastic behavior of ceramics.

陶瓷中的位错因其巨大的应用潜力而被越来越多的人所认识,如增强固有脆性陶瓷的韧性和定制功能特性。然而,由于陶瓷特有的复杂原子间相互作用,包括离子键和共价键的混合,以及复杂晶体结构中高度扭曲和广泛的位错核心结构,对陶瓷中位错塑性的原子模拟仍具有挑战性。这些复杂性超出了经验原子间位势的能力。因此,构建神经网络电位(NNPs)成为最佳解决方案。然而,由于陶瓷中位错核心构型的复杂性,以及密度泛函理论对包含位错核心的大型原子模型的计算要求,创建包含位错结构的训练数据集十分困难。在这项工作中,我们提出了一种通过高通量计算更容易计算的属性训练数据集。利用这个数据集,我们成功开发了陶瓷中位错塑性的 NNPs,特别是针对三种典型的功能陶瓷:ZnO、GaN 和 SrTiO3。这些 NNPs 有效地捕捉到了差排的非均匀性和带电核心结构和滑垒,以及带电差排之间的长程静电相互作用。通过测量从大规模模拟中得出的快照的相似性和不确定性,以及对各种特性的广泛验证,进一步验证了该数据集的有效性。利用构建的 NNPs,我们通过纳米柱压缩和纳米压痕测试了陶瓷中的位错塑性,结果与实验观察结果非常吻合。这项研究为构建 NNPs 提供了一个有效的框架,可对位错塑性进行详细的原子建模,为探索陶瓷的塑性行为开辟了新的途径。
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引用次数: 0
A Ring2Vec description method enables accurate predictions of molecular properties in organic solar cells Ring2Vec 描述方法可准确预测有机太阳能电池的分子特性
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-22 DOI: 10.1038/s41524-024-01372-w
Ting Zhang, Kangzhong Wang, Kunlei Jing, Gang Li, Qing Li, Chen Zhang, He Yan

Predicting the properties of non-fullerene acceptors (NFAs), complex organic molecules used in organic solar cells (OSCs), poses a significant challenge. Some existing approaches primarily focus on atom-level information and may overlook high-level molecular features, including the subunits of NFAs. While other methods that effectively represent subunit information show improved prediction performance, they require labor-intensive data labeling. In this paper, we introduce an efficient molecular description method that automatically extracts molecular information at both the atom and subunit levels without any labor-intensive data labeling. Inspired by the Word2Vec method, our Ring2Vec method treats the “rings” in organic molecules as analogous to “words” in sentences. We achieve fast and accurate predictions of the energy levels of NFA molecules, with a minimal prediction error of merely 0.06 eV. Furthermore, our method can potentially have broad applicability across various domains of molecular description and property prediction, owing to the efficiency of the Ring2Vec model.

非富勒烯受体(NFA)是有机太阳能电池(OSC)中使用的复杂有机分子,预测其特性是一项重大挑战。现有的一些方法主要关注原子级信息,可能会忽略高层次的分子特征,包括非富勒烯受体的亚基。虽然其他有效表示亚基信息的方法提高了预测性能,但它们需要耗费大量人力进行数据标注。在本文中,我们介绍了一种高效的分子描述方法,它能自动提取原子和亚基层面的分子信息,而无需任何劳动密集型数据标注。受 Word2Vec 方法的启发,我们的 Ring2Vec 方法将有机分子中的 "环 "视为句子中的 "词"。我们能快速准确地预测 NFA 分子的能级,预测误差最小仅为 0.06 eV。此外,由于 Ring2Vec 模型的高效性,我们的方法有可能广泛应用于分子描述和性质预测的各个领域。
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引用次数: 0
Dielectric tensor prediction for inorganic materials using latent information from preferred potential 利用优先电位的潜信息预测无机材料的介电张量
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-21 DOI: 10.1038/s41524-024-01450-z
Zetian Mao, WenWen Li, Jethro Tan

Dielectrics are crucial for technologies like flash memory, CPUs, photovoltaics, and capacitors, but public data on these materials are scarce, restricting research and development. Existing machine learning models have focused on predicting scalar polycrystalline dielectric constants, neglecting the directional nature of dielectric tensors essential for material design. This study leverages multi-rank equivariant structural embeddings from a universal neural network potential to enhance predictions of dielectric tensors. We develop an equivariant readout decoder to predict total, electronic, and ionic dielectric tensors while preserving O(3) equivariance, and benchmark its performance against state-of-the-art algorithms. Virtual screening of thermodynamically stable materials from Materials Project for two discovery tasks, high-dielectric and highly anisotropic materials, identifies promising candidates including Cs2Ti(WO4)3 (band gap Eg = 2.93eV, dielectric constant ε = 180.90) and CsZrCuSe3 (anisotropic ratio αr = 121.89). The results demonstrate our model’s accuracy in predicting dielectric tensors and its potential for discovering novel dielectric materials.

电介质对闪存、CPU、光伏和电容器等技术至关重要,但有关这些材料的公开数据却很少,限制了研究和开发。现有的机器学习模型侧重于预测标量多晶介电常数,忽略了介电张量对材料设计至关重要的方向性。本研究利用通用神经网络潜能的多阶梯等变结构嵌入来增强对介电张量的预测。我们开发了一种等方差读出解码器来预测总介电张量、电子介电张量和离子介电张量,同时保持 O(3) 等方差,并将其性能与最先进的算法进行比较。针对高介电和高各向异性材料这两项发现任务,对材料项目中的热力学稳定材料进行了虚拟筛选,确定了包括 Cs2Ti(WO4)3(带隙 Eg = 2.93eV,介电常数 ε = 180.90)和 CsZrCuSe3(各向异性比 αr = 121.89)在内的有希望的候选材料。这些结果证明了我们的模型在预测介电张量方面的准确性及其发现新型介电材料的潜力。
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引用次数: 0
Automated optimization and uncertainty quantification of convergence parameters in plane wave density functional theory calculations 平面波密度泛函理论计算中收敛参数的自动优化和不确定性量化
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-19 DOI: 10.1038/s41524-024-01388-2
Jan Janssen, Edgar Makarov, Tilmann Hickel, Alexander V. Shapeev, Jörg Neugebauer

First principles approaches have revolutionized our ability in using computers to predict, explore, and design materials. A major advantage commonly associated with these approaches is that they are fully parameter-free. However, numerically solving the underlying equations requires to choose a set of convergence parameters. With the advent of high-throughput calculations, it becomes exceedingly important to achieve a truly parameter-free approach. Utilizing uncertainty quantification (UQ) and linear decomposition we derive a numerically highly efficient representation of the statistical and systematic error in the multidimensional space of the convergence parameters for plane wave density functional theory (DFT) calculations. Based on this formalism we implement a fully automated approach that requires as input the target precision rather than convergence parameters. The performance and robustness of the approach are shown by applying it to a large set of elements crystallizing in a cubic fcc lattice.

第一性原理方法彻底改变了我们利用计算机预测、探索和设计材料的能力。这些方法通常具有的一个主要优势是完全不需要参数。然而,对基础方程进行数值求解需要选择一组收敛参数。随着高通量计算的出现,实现真正的无参数方法变得极为重要。利用不确定性量化(UQ)和线性分解,我们得出了平面波密度泛函理论(DFT)计算收敛参数多维空间中统计和系统误差的高效数值表示。在此形式主义的基础上,我们实现了一种全自动方法,该方法需要输入目标精度而不是收敛参数。通过将该方法应用于立方 fcc 晶格中结晶的大量元素,展示了该方法的性能和稳健性。
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引用次数: 0
Understanding chiral charge-density wave by frozen chiral phonon 通过冷冻手性声子理解手性电荷密度波
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-19 DOI: 10.1038/s41524-024-01440-1
Shuai Zhang, Kaifa Luo, Tiantian Zhang

Charge density wave (CDW) is discovered within a wide interval in solids, however, its microscopic nature is still not transparent in most realistic materials, and the recently studied chiral ones with chiral structural distortion remain unclear. In this paper, we try to understand the driving forces of chiral CDW transition by chiral phonons from the electron-phonon coupling scenario. We use the prototypal monolayer 1T-TiSe2 as a case study to unveil the absence of chirality in the CDW transition and propose a general approach, i.e., symmetry-breaking stimuli, to engineer the chirality of CDW in experiments. Inelastic scattering patterns are also studied as a benchmark of chiral CDW (CCDW, which breaks the mirror/inversion symmetry in 2D/3D systems). We notice that the anisotropy changing of Bragg peak profiles, which is contributed by the soft chiral phonons, can show a remarkable signature for CCDW. Our findings pave a path to understanding the CCDW from the chiral phonon perspective, especially in van der Waals materials, and provides a powerful way to manipulate the chirality of CDW.

电荷密度波(CDW)在固体中被发现的范围很广,但其微观性质在大多数现实材料中仍不透明,而最近研究的具有手性结构畸变的手性材料仍不清楚。本文试图从电子-声子耦合的角度来理解手性声子对手性 CDW 转变的驱动力。我们以原型单层 1T-TiSe2 为案例,揭示了 CDW 转变中手性的缺失,并提出了在实验中设计 CDW 手性的一般方法,即对称性破坏刺激。作为手性 CDW(CCDW,打破了二维/三维系统中的镜像/反转对称性)的基准,我们还研究了非弹性散射模式。我们注意到,由软手性声子引起的布拉格峰轮廓的各向异性变化可以显示出手性 CDW 的显著特征。我们的发现为从手性声子的角度理解 CCDW(尤其是范德华材料中的 CCDW)铺平了道路,并为操纵 CDW 的手性提供了有力的方法。
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引用次数: 0
Large language models design sequence-defined macromolecules via evolutionary optimization 大语言模型通过进化优化设计序列定义的大分子
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-18 DOI: 10.1038/s41524-024-01449-6
Wesley F. Reinhart, Antonia Statt

We demonstrate the ability of a large language model to perform evolutionary optimization for materials discovery. Anthropic’s Claude 3.5 model outperforms an active learning scheme with handcrafted surrogate models and an evolutionary algorithm in selecting monomer sequences to produce targeted morphologies in macromolecular self-assembly. Utilizing pre-trained language models can potentially reduce the need for hyperparameter tuning while offering new capabilities such as self-reflection. The model performs this task effectively with or without context about the task itself, but domain-specific context sometimes results in faster convergence to good solutions. Furthermore, when this context is withheld, the model infers an approximate notion of the task (e.g., calling it a protein folding problem). This work provides evidence of Claude 3.5’s ability to act as an evolutionary optimizer, a recently discovered emergent behavior of large language models, and demonstrates a practical use case in the study and design of soft materials.

我们展示了大型语言模型为材料发现进行进化优化的能力。Anthropic 的 Claude 3.5 模型在选择单体序列以在大分子自组装中产生目标形态方面,优于使用手工制作的代理模型和进化算法的主动学习方案。利用预训练的语言模型可以减少对超参数调整的需求,同时提供新的功能,如自我反射。无论是否有任务本身的上下文,模型都能有效地完成这项任务,但特定领域的上下文有时会使模型更快地收敛到良好的解决方案。此外,在没有特定语境的情况下,模型会推断出任务的近似概念(例如,称其为蛋白质折叠问题)。这项工作证明了 Claude 3.5 作为进化优化器的能力(这是最近发现的大型语言模型的新兴行为),并展示了软材料研究和设计中的一个实际应用案例。
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引用次数: 0
From electrons to phase diagrams with machine learning potentials using pyiron based automated workflows 使用基于 pyiron 的自动工作流程,利用机器学习电位从电子到相图
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-17 DOI: 10.1038/s41524-024-01441-0
Sarath Menon, Yury Lysogorskiy, Alexander L. M. Knoll, Niklas Leimeroth, Marvin Poul, Minaam Qamar, Jan Janssen, Matous Mrovec, Jochen Rohrer, Karsten Albe, Jörg Behler, Ralf Drautz, Jörg Neugebauer

We present a comprehensive and user-friendly framework built upon the pyiron integrated development environment (IDE), enabling researchers to perform the entire Machine Learning Potential (MLP) development cycle consisting of (i) creating systematic DFT databases, (ii) fitting the Density Functional Theory (DFT) data to empirical potentials or MLPs, and (iii) validating the potentials in a largely automatic approach. The power and performance of this framework are demonstrated for three conceptually very different classes of interatomic potentials: an empirical potential (embedded atom method - EAM), neural networks (high-dimensional neural network potentials - HDNNP) and expansions in basis sets (atomic cluster expansion - ACE). As an advanced example for validation and application, we show the computation of a binary composition-temperature phase diagram for Al-Li, a technologically important lightweight alloy system with applications in the aerospace industry.

我们在 pyiron 集成开发环境 (IDE) 的基础上提出了一个全面且用户友好的框架,使研究人员能够执行整个机器学习势 (MLP) 开发周期,包括:(1)创建系统的 DFT 数据库;(2)将密度泛函理论 (DFT) 数据拟合到经验势或 MLP;(3)以基本自动的方式验证势。该框架的功能和性能针对概念上截然不同的三类原子间位势进行了演示:经验位势(嵌入原子法 - EAM)、神经网络(高维神经网络位势 - HDNNP)和基集扩展(原子团扩展 - ACE)。作为验证和应用的高级示例,我们展示了对 Al-Li 的二元成分-温度相图的计算,Al-Li 是一种技术上重要的轻质合金系统,在航空航天工业中有着广泛的应用。
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引用次数: 0
Exploring electron-beam induced modifications of materials with machine-learning assisted high temporal resolution electron microscopy 利用机器学习辅助高时间分辨率电子显微镜探索电子束诱导的材料改性
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2024-11-15 DOI: 10.1038/s41524-024-01448-7
Matthew G. Boebinger, Ayana Ghosh, Kevin M. Roccapriore, Sudhajit Misra, Kai Xiao, Stephen Jesse, Maxim Ziatdinov, Sergei V. Kalinin, Raymond R. Unocic

Directed atomic fabrication using an aberration-corrected scanning transmission electron microscope (STEM) opens new pathways for atomic engineering of functional materials. In this approach, the electron beam is used to actively alter the atomic structure through electron beam induced irradiation processes. One of the impediments that has limited widespread use thus far has been the ability to understand the fundamental mechanisms of atomic transformation pathways at high spatiotemporal resolution. Here, we develop a workflow for obtaining and analyzing high-speed spiral scan STEM data, up to 100 fps, to track the atomic fabrication process during nanopore milling in monolayer MoS2. An automated feedback-controlled electron beam positioning system combined with deep convolution neural network (DCNN) was used to decipher fast but low signal-to-noise datasets and classify time-resolved atom positions and nature of their evolving atomic defect configurations. Through this automated decoding, the initial atomic disordering and reordering processes leading to nanopore formation was able to be studied across various timescales. Using these experimental workflows a greater degree of speed and information can be extracted from small datasets without compromising spatial resolution. This approach can be adapted to other 2D materials systems to gain further insights into the defect formation necessary to inform future automated fabrication techniques utilizing the STEM electron beam.

利用像差校正扫描透射电子显微镜(STEM)进行定向原子制造,为功能材料的原子工程开辟了新的途径。在这种方法中,电子束通过电子束诱导辐照过程主动改变原子结构。迄今为止,限制其广泛应用的障碍之一是无法以高时空分辨率了解原子转变途径的基本机制。在此,我们开发了一种获取和分析高速螺旋扫描 STEM 数据(高达 100 fps)的工作流程,以跟踪单层 MoS2 纳米孔铣削过程中的原子制造过程。自动反馈控制电子束定位系统与深度卷积神经网络(DCNN)相结合,用于解密快速但信噪比低的数据集,并对时间分辨原子位置及其原子缺陷配置演变的性质进行分类。通过这种自动解码,可以跨时标研究导致纳米孔形成的初始原子无序和重排过程。利用这些实验工作流程,可以在不影响空间分辨率的情况下从小型数据集中提取更快的速度和更多的信息。这种方法可应用于其他二维材料系统,以进一步深入了解缺陷的形成,为未来利用 STEM 电子束的自动化制造技术提供依据。
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引用次数: 0
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npj Computational Materials
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