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Incorporating long-range interactions via the multipole expansion into ground and excited-state molecular simulations 结合远程相互作用,通过多极膨胀到基态和激发态分子模拟
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-25 DOI: 10.1038/s41524-026-02048-3
Rhyan Barrett, Johannes C. B. Dietschreit, Julia Westermayr
Simulating long-range interactions remains a significant challenge for molecular machine learning (ML) potentials due to the need to accurately capture interactions over large spatial regions. In this work, we integrate the multipole expansion into equivariant ML potentials to model long-range interactions present in QM/MM simulations more accurately. By incorporating the multipole expansion, we are able to effectively capture environmental long-range effects in both ground and excited states. Benchmark evaluations demonstrate the superior performance of including higher-order features from atoms in the environment. To showcase the efficacy of our model, we accurately predict properties such as energies and forces for nickel complex systems and simulate the nonadiabatic excited-state dynamics of a ring-opening reaction in solution. Furthermore, we show that transfer learning from foundational models trained without any explicit environment enhances data efficiency, reducing the need to generate large QM/MM datasets before training. These examples demonstrate the versatility of our approach, paving the way for efficient, accurate, and scalable simulations of complex molecular systems and materials across electronic states.
由于需要准确捕获大空间区域的相互作用,模拟远程相互作用仍然是分子机器学习(ML)潜力的重大挑战。在这项工作中,我们将多极展开整合到等变ML势中,以更准确地模拟QM/MM模拟中存在的远程相互作用。通过结合多极扩展,我们能够有效地捕获基态和激发态的环境长期影响。基准测试评估证明了包含环境中原子的高阶特征的优越性能。为了证明我们的模型的有效性,我们准确地预测了镍复合体系的能量和力等性质,并模拟了溶液中开环反应的非绝热激发态动力学。此外,我们表明,在没有任何显式环境的情况下,从基础模型中进行迁移学习可以提高数据效率,减少了在训练前生成大型QM/MM数据集的需要。这些例子证明了我们方法的多功能性,为跨电子状态的复杂分子系统和材料的高效,准确和可扩展的模拟铺平了道路。
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引用次数: 0
Publisher Correction: Active learning enables generation of molecules that advance the known Pareto front 发布者更正:主动学习能够生成推进已知帕累托前沿的分子
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-24 DOI: 10.1038/s41524-026-02039-4
Evan R. Antoniuk, Peggy Li, Nathan Keilbart, Stephen Weitzner, Bhavya Kailkhura, Anna M. Hiszpanski
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引用次数: 0
Multiscale kinetic model of ethylene oligomerization in Ni-NU-1000 metal-organic framework Ni-NU-1000金属-有机骨架中乙烯低聚反应的多尺度动力学模型
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-24 DOI: 10.1038/s41524-026-02044-7
Aleksandr Avdoshin, Nikita A. Matsokin, Thanh-Nam Huynh, Dmitry I. Sharapa, Karin Fink, Felix Studt, Wolfgang Wenzel, Mariana Kozlowska
Single-atom catalysts (SACs) provide isolated, well-defined metal sites that are suited for mechanistic modeling in porous materials such as metal-organic frameworks (MOFs). However, the influence of framework topology and mass transport on catalytic outcomes remains poorly understood. Here we develop a multiscale kinetic model for ethylene oligomerization in Ni-grafted NU-1000 that combines density functional theory (DFT)-derived free-energy barriers with adsorption and diffusion descriptors. The framework predicts product distributions under realistic reaction conditions. The simulations show that flow-mode operation favors selective C4H8 formation across a temperature range. This selectivity window progressively narrows with increasing effective diffusion length and catalytic-site density, as longer residence times enhance chain growth beyond dimerization. In contrast, batch-mode operation shifts the product distribution toward heavier olefins. These trends provide practical guidance for tuning operating conditions and material properties to achieve desired selective Ni-MOF catalysts.
单原子催化剂(SACs)提供了孤立的、定义明确的金属位点,适用于多孔材料(如金属有机框架(mof))的机械建模。然而,框架拓扑结构和质量输运对催化结果的影响仍然知之甚少。本文建立了ni接枝NU-1000中乙烯低聚化的多尺度动力学模型,该模型结合了密度泛函理论(DFT)导出的自由能势垒与吸附和扩散描述子。该框架预测了实际反应条件下的产物分布。模拟结果表明,流动模式有利于在一定温度范围内选择性地形成C4H8。随着有效扩散长度和催化位点密度的增加,选择性窗口逐渐缩小,因为较长的停留时间促进了链的生长,超过了二聚化。相反,批量操作将产品分布转向较重的烯烃。这些趋势为调整操作条件和材料性能提供了实际指导,以实现所需的选择性Ni-MOF催化剂。
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引用次数: 0
Impact of higher-order exchange on the lifetime of skyrmions and antiskyrmions 高阶交换对skyrmions和antiskyrmions寿命的影响
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-23 DOI: 10.1038/s41524-026-02034-9
Hendrik Schrautzer, Moritz A. Goerzen, Bjarne Beyer, Soumyajyoti Haldar, Pavel F. Bessarab, Stefan Heinze
Reliable control of skyrmion lifetime is essential for realizing spintronic devices, yet the role of higher-order exchange—which can lead to skyrmion stabilization—remains largely unexplored. Here we calculate lifetimes of isolated skyrmions and antiskyrmions at transition-metal interfaces based on an atomistic spin model that includes all fourth-order exchange terms. Within harmonic transition-state theory, we evaluate both energetic and entropic contributions and find substantially enhanced lifetimes when higher-order exchange is included. The four-spin four-site interaction raises the energy barrier and lowers the curvature of the energy landscape at the collapse saddle point, increasing the pre-exponential factor. We show that skyrmions and antiskyrmions can remain thermally stable even without Dzyaloshinskii-Moriya interaction (DMI), and that tuning the four-spin term by a small amount modulates the prefactor over orders of magnitude. Our results identify higher-order exchange as a promising route to stabilize topological magnetic textures—in particular in systems lacking DMI—and to engineer their thermally activated decay.
可靠地控制斯基米子的寿命对于实现自旋电子器件是必不可少的,然而高阶交换的作用——它可以导致斯基米子的稳定——在很大程度上仍未被探索。本文基于包含所有四阶交换项的原子自旋模型,计算了过渡金属界面上孤立skyrmions和反skyrmions的寿命。在谐波过渡态理论中,我们评估了能量和熵的贡献,并发现当包括高阶交换时,寿命大大提高。四自旋四位点相互作用提高了能量势垒,降低了坍缩鞍点处能量景观的曲率,增加了指数前因子。我们证明了即使没有Dzyaloshinskii-Moriya相互作用(DMI), skyrmions和antiskyrmions也可以保持热稳定,并且将四自旋项调整少量,可以在数量级上调节前因子。我们的研究结果表明,高阶交换是稳定拓扑磁性结构(特别是在缺乏dmi的系统中)和设计其热激活衰变的有希望的途径。
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引用次数: 0
High-entropy solid electrolytes discovery: a dual-stage machine learning framework bridging atomic configurations and ionic transport properties 高熵固体电解质的发现:一个连接原子构型和离子输运性质的双阶段机器学习框架
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-20 DOI: 10.1038/s41524-026-02041-w
Xiao Fu, Jing Xu, Qifan Yang, Xuhe Gong, Jingchen Lian, Liqi Wang, Zibin Wang, Ruijuan Xiao, Hong Li
The rapid development of computational materials science powered by machine learning (ML) is gradually leading to solutions to several previously intractable scientific problems. One of the most prominent is machine learning interatomic potentials (MLIPs), which expedites the study of dynamical methods for large-scale systems. However, as a promising field, high-entropy (HE) solid-state electrolytes (SEs) remain constrained by trial-and-error paradigms, lacking systematic computational strategies to address their huge and high-dimensional composition space. In this work, we establish a dual-stage ML framework that combines fine-tuned MLIPs with interpretable feature-property mapping to accelerate the high-entropy SEs discovery. Using Li3Zr2Si2PO12 (LZSP) as a prototype, the fine-tuned CHGNet-based relaxation provides atomic structure for each configuration, the structure features - mean squared displacement (SF-MSD) model predicts the ionic transport properties and identifies critical descriptors. The theoretical studies indicate that the framework can satisfy the multiple requirements including computational efficiency, generalization reliability and prediction accuracy. One of the most promising element combinations in the quinary HE-LZSP space containing 4575 compositions is identified with a high ionic conductivity of 4.53 mS/cm as an application example. The framework contains generalizability and extensibility to other SE families.
以机器学习(ML)为动力的计算材料科学的快速发展正在逐步解决一些以前难以解决的科学问题。其中最突出的是机器学习原子间势(MLIPs),它加速了大规模系统动力学方法的研究。然而,作为一个有前景的领域,高熵固态电解质(SEs)仍然受到试错范式的限制,缺乏系统的计算策略来解决其巨大的高维组成空间。在这项工作中,我们建立了一个双阶段机器学习框架,将微调的mlip与可解释的特征属性映射相结合,以加速高熵se的发现。以Li3Zr2Si2PO12 (LZSP)为原型,基于chgnet的微调弛豫提供了每种构型的原子结构,结构特征-均方位移(SF-MSD)模型预测了离子输运性质并识别了关键描述符。理论研究表明,该框架能够满足计算效率、泛化可靠性和预测精度等多方面的要求。在含有4575种组合物的HE-LZSP五元空间中,确定了一种最有前途的元素组合,其离子电导率高达4.53 mS/cm。该框架具有对其他SE家族的通用性和可扩展性。
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引用次数: 0
Framework to completely bypass expensive DFT calculations via graph neural networks for vacancy formation energy predictions in FCC high entropy alloys 框架完全绕过昂贵的DFT计算通过图神经网络在FCC高熵合金的空位形成能预测
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-19 DOI: 10.1038/s41524-026-02037-6
Nathan Linton, Parampreet Singh, Dilpuneet S. Aidhy
The compositional complexity and chemical randomness of high entropy alloys (HEAs) make conventional atomic-scale calculations, such as density functional theory (DFT), prohibitively expensive for property prediction. One key property of interest is the vacancy formation energy (({E}_{v}^{f})), which plays a crucial role in diffusion and microstructure evolution. In this work, we present a machine learning (ML) framework that eliminates the need for DFT calculations by predicting ({E}_{v}^{f}{rm{s}}) in HEAs using models trained on binary and ternary alloys. Our approach first relaxes face-centered cubic (FCC) structures using a fine-tuned CHGNet model and then uses the resulting configurations as input into a crystal graph convolutional neural network (CGCNN) to predict both Bader charges and ({E}_{v}^{f}{rm{s}}). Incorporating Bader charges as descriptors introduces DFT-informed electronic structure information into the model, significantly improving prediction accuracy compared to using elemental features alone. Furthermore, we demonstrate that the model’s performance generalizes well to other alloy systems with minimal fine-tuning, offering a robust and efficient path toward high-throughput defect property prediction in complex alloys.
高熵合金(HEAs)的成分复杂性和化学随机性使得传统的原子尺度计算,如密度泛函理论(DFT),在性能预测方面过于昂贵。我们感兴趣的一个关键性质是空位形成能(({E}_{v}^{f})),它在扩散和微观结构演化中起着至关重要的作用。在这项工作中,我们提出了一个机器学习(ML)框架,通过使用二元和三元合金训练的模型来预测HEAs中的({E}_{v}^{f}{rm{s}}),从而消除了对DFT计算的需要。我们的方法首先使用微调的CHGNet模型放松面心立方(FCC)结构,然后将得到的构型作为输入到晶体图卷积神经网络(CGCNN)中来预测Bader电荷和({E}_{v}^{f}{rm{s}})。将Bader电荷作为描述符引入dft通知的电子结构信息到模型中,与单独使用元素特征相比,显著提高了预测精度。此外,我们证明了该模型的性能可以很好地推广到其他合金系统,只需最小的微调,为复杂合金的高通量缺陷性能预测提供了一个鲁棒和有效的途径。
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引用次数: 0
Discovery of a novel half metallic 2D Cr2Se3 monolayer with high Curie temperature from correlated antiferromagnetic 2D CrSe2 从相关反铁磁2D cr2se2中发现具有高居里温度的新型半金属2D Cr2Se3单层
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-19 DOI: 10.1038/s41524-026-02029-6
Khaled Badawy, Lianxi Zheng, Nirpendra Singh
Robust two-dimensional magnets are essential for next-generation spintronics. Using first-principles calculations, we demonstrate that only the antiferromagnetic 1H- and 1T-CrSe2 exhibit stable magnon dispersions. The preferred stability of 1T phase originates from spin-ordering polarization of correlated Cr-d states among three low-lying crystal-field levels. These levels are localized with distinct orbital character in the 1T phase, but delocalized in the 1H phase. The full occupation of low-lying levels leads to antiferromagnetic exchange, yielding Néel temperatures of 310 K (1T) and 274 K (1H). By introducing 25% Se line defects in CrSe2 monolayer, we predict a novel monolayer Cr2Se3 in H and T phases (analogous to their parent 1H/1T-CrSe2). Both Cr2Se3 phases are stable and are half-metallic, with spin (↓) band gaps of 1.39 eV (H) and 2.28 eV (T). Cr2Se3/h-BN heterostructures preserve the electronic properties, indicating feasible growth on h-BN substrates. In both phases, the partial occupation of the low-lying crystal-field levels enhances ferromagnetic exchange through hopping between occupied and unoccupied orbitals. Remarkably, Curie temperatures based on the Heisenberg Hamiltonian reach 547 K (H) and 606 K (T). The H phase satisfies the Stoner criterion, while the Heisenberg-like T phase shifts toward the Stoner regime under 2–4% biaxial tensile strain. These results position Cr2Se3 as a promising half-metallic 2D magnet.
坚固的二维磁体对下一代自旋电子学至关重要。利用第一性原理计算,我们证明了只有反铁磁性的1H-和1T-CrSe2表现出稳定的磁振子色散。1T相的优先稳定性源于三个低洼晶体场能级间相关Cr-d态的自旋有序极化。这些能级在1T相具有明显的轨道特征,但在1H相不具有局域性。完全占据低洼能级导致反铁磁交换,产生310 K (1T)和274 K (1H)的nsamel温度。通过在CrSe2单分子层中引入25%的Se线缺陷,我们预测在H和T相中形成新的Cr2Se3单分子层(类似于它们的母体1H/1T-CrSe2)。两个Cr2Se3相都是稳定的半金属相,自旋(↓)带隙分别为1.39 eV (H)和2.28 eV (T)。Cr2Se3/h-BN异质结构保留了电子性能,表明在h-BN衬底上生长是可行的。在这两个相中,低能级晶体场的部分占据通过已占据轨道和未占据轨道之间的跳跃增强了铁磁交换。值得注意的是,基于海森堡哈密顿量的居里温度达到了547 K (H)和606 K (T)。在2-4%的双轴拉伸应变下,H相满足Stoner准则,而类海森堡T相则向Stoner模式转移。这些结果表明Cr2Se3是一种很有前途的半金属二维磁铁。
{"title":"Discovery of a novel half metallic 2D Cr2Se3 monolayer with high Curie temperature from correlated antiferromagnetic 2D CrSe2","authors":"Khaled Badawy, Lianxi Zheng, Nirpendra Singh","doi":"10.1038/s41524-026-02029-6","DOIUrl":"https://doi.org/10.1038/s41524-026-02029-6","url":null,"abstract":"Robust two-dimensional magnets are essential for next-generation spintronics. Using first-principles calculations, we demonstrate that only the antiferromagnetic 1H- and 1T-CrSe2 exhibit stable magnon dispersions. The preferred stability of 1T phase originates from spin-ordering polarization of correlated Cr-d states among three low-lying crystal-field levels. These levels are localized with distinct orbital character in the 1T phase, but delocalized in the 1H phase. The full occupation of low-lying levels leads to antiferromagnetic exchange, yielding Néel temperatures of 310 K (1T) and 274 K (1H). By introducing 25% Se line defects in CrSe2 monolayer, we predict a novel monolayer Cr2Se3 in H and T phases (analogous to their parent 1H/1T-CrSe2). Both Cr2Se3 phases are stable and are half-metallic, with spin (↓) band gaps of 1.39 eV (H) and 2.28 eV (T). Cr2Se3/h-BN heterostructures preserve the electronic properties, indicating feasible growth on h-BN substrates. In both phases, the partial occupation of the low-lying crystal-field levels enhances ferromagnetic exchange through hopping between occupied and unoccupied orbitals. Remarkably, Curie temperatures based on the Heisenberg Hamiltonian reach 547 K (H) and 606 K (T). The H phase satisfies the Stoner criterion, while the Heisenberg-like T phase shifts toward the Stoner regime under 2–4% biaxial tensile strain. These results position Cr2Se3 as a promising half-metallic 2D magnet.","PeriodicalId":19342,"journal":{"name":"npj Computational Materials","volume":"17 1","pages":""},"PeriodicalIF":9.7,"publicationDate":"2026-03-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"147496688","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":1,"RegionCategory":"材料科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Constructing machine learning interatomic potentials with minimum amount of ab initio data 用最少的从头算数据构造机器学习原子间势
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-17 DOI: 10.1038/s41524-026-02023-y
Wentao Zhang, Xingxing Wu, Chen Wang, Siyu Hu, Yueyang Liu, Lin-Wang Wang
Machine learning interatomic potentials (MLIP) are powerful tools for using large-scale molecular dynamics (MD) to evaluate material properties, including the performance of solid-state electrolytes (SSEs). While there are many efforts for constructing universal big MLIP models, their accuracies and speeds of inference still need to be improved for many practical applications. Another approach is to develop a system-specific MLIP model relying on active learning strategy. Although much cheaper than training a big model, using the conventional procedure, it still requires large numbers of active learning loops and the corresponding DFT calculations to ensure convergency. Here, we propose a single-shot workflow that significantly accelerates small MLIP model development by leveraging the capabilities of the big model (using MACE as one example) and requiring only a few hundred additional DFT calculations. Our workflow comprises two stages, first the MACE model itself is fine-tuned to make it more accurate for the given system, second a smaller MLIP model (using NEP as one example) is distilled from the fine-tuned MACE model. We employed a MACE-driven sampling strategy, carried out additional DFT calculations without relying on active learning iterations. We show that fine-tuned MACE model can inherit the stability of the pretrained model, and fine-tuning the pretrained MACE model is much more DFT data efficient comparing to training a start-from-scratch NEP model. In the second stage, the fine-tuned MACE model provides the dataset to train the NEP model, allows the final NEP model to carry out large scale MD simulations with competitive accuracy. This integrated workflow establishes a systematic pathway for rapid MLIP development via small additional DFT dataset, with potential applications to many material systems.
机器学习原子间势(MLIP)是使用大规模分子动力学(MD)来评估材料性能的强大工具,包括固态电解质(sse)的性能。虽然构建通用的大型MLIP模型已经做了很多努力,但在许多实际应用中,其精度和推理速度仍有待提高。另一种方法是开发基于主动学习策略的系统特定MLIP模型。尽管使用传统方法比训练一个大模型便宜得多,但它仍然需要大量的主动学习循环和相应的DFT计算来确保收敛性。在这里,我们提出了一个单镜头工作流,通过利用大模型的功能(使用MACE作为一个例子)显著加速小型MLIP模型的开发,并且只需要几百个额外的DFT计算。我们的工作流程包括两个阶段,首先对MACE模型本身进行微调,使其对给定系统更准确,其次从微调后的MACE模型中提取更小的MLIP模型(以NEP为例)。我们采用了mace驱动的采样策略,在不依赖主动学习迭代的情况下进行了额外的DFT计算。我们的研究表明,微调后的MACE模型可以继承预训练模型的稳定性,并且与从头开始训练NEP模型相比,微调后的MACE模型具有更高的DFT数据效率。在第二阶段,微调后的MACE模型为训练NEP模型提供数据集,使最终的NEP模型能够以具有竞争力的精度进行大规模MD模拟。这种集成的工作流程通过附加的小DFT数据集为MLIP的快速开发建立了系统的途径,具有潜在的应用于许多材料系统。
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引用次数: 0
Photoinduced ultrafast charge transfer and enhanced optoelectronics in MoS2/Ti2CO2 van der Waals heterojunction MoS2/Ti2CO2范德华异质结的光致超快电荷转移和增强光电子学
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-16 DOI: 10.1038/s41524-026-02035-8
Xianke Yue, Zhong Zhou, Xiaodong Wang, Qi An, Kolan Madhav Reddy
The rapid development of two-dimensional van der Waals heterostructures has sparked notable interest in optoelectronic applications. However, issues such as lattice mismatch or a misalignment of the constituent layers can drastically suppress charge transfer for these interlayer transitions. Here, we construct a new type-II MoS2/Ti2CO2 heterojunction using density functional theory and non-adiabatic molecular dynamics simulations, revealing the optimal band alignments across various stacking configurations. The optimized heterointerface exhibits ultrafast charge separation, with electron and hole transfer completing within 4.6 fs and 228.8 fs, respectively, and a prolonged carrier lifetime of 1.53 ns. Compared to pristine monolayers, the heterointerface displays broader light absorption from the visible to the UV spectrum. This optoelectronic performance is further enhanced by biaxial strain, which effectively tunes the photoresponse, resulting in a high theoretical power conversion efficiency of 12.89%. These findings offer valuable guidance for designing high-performance MoS2-based heterostructures for next-generation optoelectronic and energy conversion devices.
二维范德华异质结构的快速发展引起了人们对光电应用的极大兴趣。然而,晶格失配或组成层的错位等问题会极大地抑制这些层间转变的电荷转移。本文利用密度泛函理论和非绝热分子动力学模拟,构建了一种新型ii型MoS2/Ti2CO2异质结,揭示了不同堆叠构型下的最佳能带排列。优化后的异质界面表现出超快的电荷分离,电子和空穴转移分别在4.6 fs和228.8 fs内完成,载流子寿命延长至1.53 ns。与原始单层相比,异质界面显示出从可见到紫外光谱更广泛的光吸收。双轴应变可以有效地调节光响应,从而进一步提高光电性能,从而实现高达12.89%的理论功率转换效率。这些发现为设计下一代光电和能量转换器件的高性能mos2异质结构提供了有价值的指导。
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引用次数: 0
Flat topological nodal lines in heavy-fermion compound CeCoGe3 重费米子化合物CeCoGe3的平坦拓扑节点线
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2026-03-13 DOI: 10.1038/s41524-026-02036-7
Yuting Wang, Weikang Wu, Jianzhou Zhao
The interplay between strong electronic correlations, unconventional superconductivity, and symmetry-protected topology provides a fertile ground for discovering exotic quantum states. In this work, we investigate the correlated electronic structure and topological properties of the heavy fermion material CeCoGe3 using density functional theory combined with dynamical mean-field theory calculations. Our results reveal a crossover from high temperature incoherent states to low temperature coherent heavy quasiparticles, accompanied by a mass enhancement of m*/mDFT ~ 52.6 at T = 25 K. The interplay between electronic correlation, spin-orbit coupling and the noncentrosymmetric I4mm crystal symmetry stabilizes flat topological nodal lines within 10 meV of the Fermi level, which could contribute a significant density of states. The proximity of topological nodal lines to the Fermi surface suggests a potential role in mediating pressure induced unconventional superconductivity. Our work establishes CeCoGe3 as a prototype topological nodal line Kondo semimetal. The coexistence of strong correlation, non-trivial band topology and superconductivity indicates CeCoGe3 as a potential candidate for realizing topological superconductivity.
强电子相关性、非常规超导性和对称保护拓扑之间的相互作用为发现奇异量子态提供了肥沃的土壤。本文利用密度泛函理论结合动力学平均场理论计算,研究了重费米子材料CeCoGe3的相关电子结构和拓扑性质。我们的结果揭示了从高温非相干态到低温相干重准粒子的交叉,并伴随着在T = 25 K时m*/mDFT ~ 52.6的质量增强。电子相关、自旋轨道耦合和非中心对称的I4mm晶体对称性之间的相互作用稳定了费米能级10 meV内的平坦拓扑节点线,这可能有助于显著的态密度。拓扑节点线与费米表面的接近表明在介导压力诱导的非常规超导性方面具有潜在作用。我们的工作建立了CeCoGe3作为原型拓扑节点线近藤半金属。强相关性、非平凡带拓扑和超导性的共存表明CeCoGe3是实现拓扑超导性的潜在候选材料。
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引用次数: 0
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