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Bayesian Optimization of Grain-Boundary Segregation in High-Entropy Alloys 高熵合金晶界偏析的贝叶斯优化
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-11 DOI: 10.1038/s41524-025-01850-9
Shimanta Das, Noah Oyeniran, Joshua Walter, Aidan Gesch, Chongze Hu
The concurrent segregation of multiple solute elements at grain boundaries (GBs), also known as co-segregation, is a pervasive interfacial behavior that governs microstructural evolution and influences many properties of high-entropy alloys (HEAs). However, accurately predicting co-segregation behavior in HEAs is a challenging task due to the vast compositional space and complex interactions among multiple solute elements. In this paper, we developed a scalarization-based Bayesian optimization (SBO) framework integrated with high-throughput atomistic simulations to efficiently explore and optimize the large compositional space of CrMnFeCoNi HEAs for targeted co-segregation behavior and other desirable interfacial properties. Specifically, Thompson sampling is adopted to explore the input compositional space and identify HEA candidates representing two extremes: the strongest and weakest co-segregation of Cr and Mn at CrMnFeCoNi GBs. These SBO-predicted segregation extremes are subsequently validated by hybrid molecular dynamics/Monte Carlo simulations and first-principles calculations. Furthermore, electronic structure calculations demonstrate that the co-segregation of Cr and Mn can be ascribed to the hybridization of their d valence electrons promoted by the presence of Fe. While this SBO framework focuses on segregation behavior, it can be easily extended to optimize a wide range of interfacial properties in multicomponent systems. This study establishes a new paradigm for designing advanced HEAs through interfacial property optimization.
多种溶质元素在晶界处的同时偏析,也称为共偏析,是一种普遍存在的界面行为,它控制着高熵合金(HEAs)的微观组织演变并影响其许多性能。然而,由于溶质元素的组成空间大,相互作用复杂,准确预测HEAs中的共偏析行为是一项具有挑战性的任务。在本文中,我们开发了一个基于规模的贝叶斯优化(SBO)框架,结合高通量原子模拟,以有效地探索和优化crmnnfeconi HEAs的大组成空间,以获得目标共隔离行为和其他理想的界面性质。具体来说,采用汤普森采样来探索输入成分空间,并确定代表两个极端的HEA候选物:Cr和Mn在crmnnfeconi gb中最强和最弱的共偏析。这些sbo预测的偏析极值随后被混合分子动力学/蒙特卡罗模拟和第一性原理计算验证。此外,电子结构计算表明,Cr和Mn的共偏析可以归因于铁的存在促进了它们的d价电子的杂化。虽然这个SBO框架关注的是分离行为,但它可以很容易地扩展到优化多组件系统中广泛的界面特性。本研究为通过界面性能优化设计高级HEAs建立了新的范例。
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引用次数: 0
MOFSimBench: evaluating universal machine learning interatomic potentials in metal-organic framework molecular modeling MOFSimBench:在金属-有机框架分子建模中评估通用机器学习原子间势
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-11 DOI: 10.1038/s41524-025-01872-3
Hendrik Kraß, Ju Huang, Seyed Mohamad Moosavi
Universal machine learning interatomic potentials (uMLIPs) have emerged as powerful tools for accelerating atomistic simulations, offering scalable and efficient modeling with accuracy close to quantum calculations. However, their reliability and effectiveness in practical, real-world applications remain an open question. Metal-organic frameworks (MOFs) and related nanoporous materials are highly porous crystals with critical relevance in carbon capture, energy storage, and catalysis applications. Modeling nanoporous materials presents distinct challenges for uMLIPs due to their diverse chemistry, structural complexity, including porosity and coordination bonds, and the absence from existing training datasets. Here, we introduce MOFSimBench, a benchmark for evaluating uMLIPs on key materials modeling tasks for nanoporous materials, including structural optimization, molecular dynamics (MD) stability, bulk property prediction, and host-guest interactions. Evaluating 20 models from various architectures, we find that top-performing uMLIPs consistently outperform classical force fields and fine-tuned machine learning potentials across all tasks, demonstrating their readiness for deployment in nanoporous materials modeling. Our analysis highlights that data quality plays a more critical role than model architecture in determining performance across all evaluated uMLIPs. We release our modular and extensible benchmarking framework at https://github.com/AI4ChemS/mofsim-bench, providing an open resource to guide the adoption for nanoporous materials modeling and further development of uMLIPs.
通用机器学习原子间势(uMLIPs)已经成为加速原子模拟的强大工具,提供可扩展和高效的建模,其精度接近量子计算。然而,它们在实际应用中的可靠性和有效性仍然是一个悬而未决的问题。金属有机骨架(mof)和相关的纳米多孔材料是高度多孔的晶体,在碳捕获、能量储存和催化应用中具有重要意义。由于纳米多孔材料具有不同的化学性质、结构复杂性(包括孔隙度和配位键)以及缺乏现有的训练数据集,因此建模纳米多孔材料对uMLIPs提出了独特的挑战。在这里,我们介绍了MOFSimBench,这是一个评估uMLIPs在纳米多孔材料关键材料建模任务中的基准,包括结构优化、分子动力学(MD)稳定性、体性质预测和主客体相互作用。通过评估来自不同架构的20个模型,我们发现表现最好的umlip在所有任务中始终优于经典力场和微调机器学习潜力,证明了它们在纳米多孔材料建模中的部署准备。我们的分析强调,在决定所有评估的umlip的性能方面,数据质量比模型架构起着更关键的作用。我们在https://github.com/AI4ChemS/mofsim-bench上发布了我们的模块化和可扩展的基准框架,提供了一个开放的资源来指导纳米多孔材料建模和uMLIPs的进一步发展。
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引用次数: 0
Chemical bonding dictates alloying effect on inherent mechanical strength and plastic deformation mechanism in CoNiCr multicomponent alloy 化学结合决定了CoNiCr多组分合金的合金化效应对其内在机械强度和塑性变形机理的影响
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-11 DOI: 10.1038/s41524-025-01907-9
Yan-Xin Guo, Hai-Le Yan, Dong Wang, Ming-Hui Cai, Na Xiao, Nan Jia, Liang Zuo
The influence of 3d transition elements and Al on the intrinsic mechanical properties of CoNiCr was investigated by a combined first-principles calculation and chemical bonding study. All alloying elements tend to reduce elastic moduli, hardness, and ideal tensile strength, with Ti, V, Cu, and Al causing the most pronounced weakening effects while Mn and Fe exerting minor influences. These changes stem from variations in electron band filling and orbital hybridization. Specifically, elements with valence electron concentration (VEC) that are significantly different from CoNiCr destabilize bonding by either depleting bonding states (Ti and V), reducing d-d hybridization and overpopulating antibonding states (Cu), or altering orbital hybridization from d-d to p-d (Al). In contrast, Mn and Fe with comparable VEC preserve the bonding strength. Regarding deformation mechanism, all dopants tend to increase stacking fault energy (γisf). Most alloys exhibit the co-activation of slip and stacking fault, while Cu alloying favors twinning alongside dislocation slip. Notably, the competition between stacking fault and twinning is governed by 1/2γisf. VEC is identified as a critical parameter influencing γisf, with alloys possessing high VEC typically showing larger γisf. These findings establish a theoretical basis for designing high-performance fcc multicomponent alloys through composition-controlled chemical bonding engineering.
采用第一性原理计算和化学键结合的方法研究了三维过渡元素和Al对CoNiCr本征力学性能的影响。所有合金元素都有降低弹性模量、硬度和理想抗拉强度的趋势,其中Ti、V、Cu和Al的削弱作用最为明显,Mn和Fe的影响较小。这些变化源于电子带填充和轨道杂化的变化。具体来说,价电子浓度(VEC)与CoNiCr显著不同的元素通过耗尽键态(Ti和V),减少d-d杂化和过度填充反键态(Cu),或改变从d-d到p-d的轨道杂化(Al)来破坏键的稳定。相比之下,具有相当VEC的Mn和Fe保持了键合强度。在变形机理上,各掺杂剂均有增加层错能(γisf)的趋势。大多数合金表现为滑移和层错的共同激活,而Cu合金则倾向于位错滑移的孪生。值得注意的是,层错和孪晶之间的竞争受1/2γisf的支配。VEC是影响γ - isf的关键参数,VEC高的合金通常具有较大的γ - isf。这些研究结果为通过成分控制化学键合工程设计高性能fcc多组分合金奠定了理论基础。
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引用次数: 0
A generative diffusion model for amorphous materials 非晶材料的生成扩散模型
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-10 DOI: 10.1038/s41524-025-01901-1
Kai Yang, Daniel Schwalbe-Koda
Generative models show great promise for the inverse design of molecules and inorganic crystals, but remain largely ineffective within more complex structures such as amorphous materials. Here, we present a diffusion model that reliably generates amorphous structures up to 3 orders of magnitude times faster than conventional simulations across processing conditions, compositions, and data sources. Generated structures recovered the short- and medium-range order, sampling diversity, and macroscopic properties of silica glass, as validated by simulations and an information-theoretical strategy. Conditional generation allowed sampling large structures at low cooling rates of 10−2 K/ps to uncover a ductile-to-brittle transition and mesoporous silica structures. Extension to metallic glassy systems accurately reproduced local structures and properties from both computational and experimental datasets, demonstrating how synthetic data can be generated from characterization results. Our methods provide a roadmap for the design and simulation of amorphous materials previously inaccessible to computational methods.
生成模型在分子和无机晶体的逆向设计方面显示出巨大的希望,但在更复杂的结构(如非晶材料)中仍然基本上无效。在这里,我们提出了一个可靠的扩散模型,可以在处理条件、成分和数据源方面比传统模拟快3个数量级。生成的结构恢复了二氧化硅玻璃的中短期秩序、采样多样性和宏观特性,并通过模拟和信息理论策略进行了验证。条件生成允许在10−2 K/ps的低冷却速率下采样大型结构,以揭示延脆转变和介孔二氧化硅结构。扩展到金属玻璃系统,从计算和实验数据集中精确地再现了局部结构和性质,展示了如何从表征结果中生成合成数据。我们的方法为以前无法用计算方法实现的非晶材料的设计和模拟提供了路线图。
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引用次数: 0
Accelerated discovery of extreme lattice thermal conductivity by crystal graph attention networks and chemical bonding 通过晶体图注意网络和化学键加速发现极端晶格导热性
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-10 DOI: 10.1038/s41524-025-01871-4
Mohammed Al-Fahdi, Riccardo Rurali, Jianjun Hu, Christopher Wolverton, Ming Hu
Designing materials with targeted lattice thermal conductivity (LTC) demands electronic-level insight into chemical bonding. We introduce two bonding descriptors, namely normalized negative integrated COHP (-ICOHP) and normalized integrated COBI, that correlate strongly with LTC and rattling (mean-squared displacement), surpassing empirical rules and the unnormalized −ICOHP across >4500 inorganic crystals by first-principles. We train a crystal attention graph neural network (CATGNN) to predict these descriptors and screen ~200,000 database structures for extreme LTCs. From 367 (533) candidates with low (high) normalized -ICOHP and normalized ICOBI, first-principles validation identifies 106 dynamically stable compounds with LTC < 5 W m−1 K−1 (68% <2 W m−1 K−1) and 13 stable compounds with LTC > 100 W m−1 K−1. The descriptors’ low cost and clear physical meaning provide a rapid, reliable route to high-throughput discovery and inverse design of crystalline materials with ultralow or ultrahigh LTC for applications in thermal insulation, thermoelectrics, and electronics cooling.
设计具有目标晶格热导率(LTC)的材料需要对化学键的电子级洞察力。我们引入了两个键描述符,即归一化负积分COHP (-ICOHP)和归一化积分COBI,它们与LTC和咔嗒(均方位移)密切相关,超越了经验规则和非归一化-ICOHP在>4500无机晶体中的第一性原理。我们训练晶体注意图神经网络(CATGNN)来预测这些描述符,并为极端ltc筛选约200,000个数据库结构。从367(533)个具有低(高)归一化-ICOHP和归一化ICOBI的候选化合物中,第一性原理验证确定了106个LTC为100 W m−1 K−1的动态稳定化合物。描述符的低成本和明确的物理含义为在绝热、热电和电子冷却应用中具有超低或超高LTC的晶体材料的高通量发现和逆向设计提供了快速、可靠的途径。
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引用次数: 0
Networking autonomous material exploration systems through transfer learning 基于迁移学习的网络化自主材料探索系统
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-09 DOI: 10.1038/s41524-025-01851-8
Naoki Yoshida, Yutaro Iwabuchi, Yasuhiko Igarashi, Yuma Iwasaki
Autonomous material exploration systems that integrate robotics, material simulations, and machine learning have advanced rapidly in recent years. Although their number continues to grow, these systems currently operate in isolation, limiting the overall efficiency of autonomous material discovery. In analogy to how human researchers advance materials science by sharing knowledge and collaborating, autonomous systems can also benefit from networking and knowledge exchange. Here, we propose a framework in which multiple autonomous material exploration systems form a network via transfer learning, selectively utilizing relevant knowledge from other systems in real time. We demonstrate this approach using three distinct autonomous systems and show that such networking significantly enhances the efficiency of material discovery. Our results suggest that the proposed framework can enable the development of large-scale autonomous material exploration networks, ultimately accelerating progress in material development.
近年来,集成机器人技术、材料模拟和机器学习的自主材料探索系统发展迅速。虽然它们的数量在不断增长,但这些系统目前是孤立运行的,限制了自主材料发现的整体效率。就像人类研究人员如何通过分享知识和合作来推进材料科学一样,自主系统也可以从网络和知识交流中受益。在这里,我们提出了一个框架,在这个框架中,多个自主材料探索系统通过迁移学习形成一个网络,有选择地实时利用其他系统的相关知识。我们使用三个不同的自治系统证明了这种方法,并表明这种网络显著提高了材料发现的效率。我们的研究结果表明,所提出的框架可以实现大规模自主材料探索网络的发展,最终加速材料开发的进展。
{"title":"Networking autonomous material exploration systems through transfer learning","authors":"Naoki Yoshida, Yutaro Iwabuchi, Yasuhiko Igarashi, Yuma Iwasaki","doi":"10.1038/s41524-025-01851-8","DOIUrl":"https://doi.org/10.1038/s41524-025-01851-8","url":null,"abstract":"Autonomous material exploration systems that integrate robotics, material simulations, and machine learning have advanced rapidly in recent years. Although their number continues to grow, these systems currently operate in isolation, limiting the overall efficiency of autonomous material discovery. In analogy to how human researchers advance materials science by sharing knowledge and collaborating, autonomous systems can also benefit from networking and knowledge exchange. Here, we propose a framework in which multiple autonomous material exploration systems form a network via transfer learning, selectively utilizing relevant knowledge from other systems in real time. We demonstrate this approach using three distinct autonomous systems and show that such networking significantly enhances the efficiency of material discovery. Our results suggest that the proposed framework can enable the development of large-scale autonomous material exploration networks, ultimately accelerating progress in material development.","PeriodicalId":19342,"journal":{"name":"npj Computational Materials","volume":"13 1","pages":""},"PeriodicalIF":9.7,"publicationDate":"2025-12-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145705142","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
Probing the ideal limit of interfacial thermal conductance in two-dimensional van der Waals heterostructures 探索二维范德华异质结构中界面热导的理想极限
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-09 DOI: 10.1038/s41524-025-01885-y
Ting Liang, Ke Xu, Penghua Ying, Wenwu Jiang, Meng Han, Xin Wu, Wengen Ouyang, Yimin Yao, Xiaoliang Zeng, Zhenqiang Ye, Zheyong Fan, Jianbin Xu
Probing the ideal limit of interfacial thermal conductance (ITC) in two-dimensional (2D) heterointerfaces is of paramount importance for assessing heat dissipation in 2D-based nanoelectronics. Using graphene/hexagonal boron nitride (Gr/h-BN), a structurally isomorphous heterostructure with minimal mass contrast, as a prototype, we develop an accurate yet highly efficient machine-learned potential (MLP) model, which drives nonequilibrium molecular dynamics (NEMD) simulations on a realistically large system with over 300,000 atoms, enabling us to report the ideal limit range of ITC for 2D heterostructures at room temperature. We further unveil an intriguing stacking-sequence-dependent ITC hierarchy in the Gr/h-BN heterostructure, which can be connected to moiré patterns and is likely universal in van der Waals layered materials. The underlying atomic-level mechanisms can be succinctly summarized as energy-favorable stacking sequences facilitating out-of-plane phonon energy transmission. This work demonstrates that MLP-driven MD simulations can serve as a new paradigm for probing and understanding thermal transport mechanisms in 2D heterostructures and other layered materials.
探索二维(2D)异质界面中界面热导(ITC)的理想极限对于评估基于二维纳米电子学的散热至关重要。以石墨烯/六方氮化硼(Gr/h-BN)这种具有最小质量对比的结构同构异质结构为原型,我们开发了一个准确而高效的机器学习势(MLP)模型,该模型驱动了具有超过30万个原子的实际大型系统的非平衡分子动力学(NEMD)模拟,使我们能够报告室温下二维异质结构的理想ITC极限范围。我们进一步揭示了Gr/h-BN异质结构中一个有趣的依赖于堆叠序列的ITC层次结构,它可以连接到莫尔模式,并且可能在范德华层状材料中是通用的。潜在的原子水平机制可以简洁地概括为有利于能量的堆叠序列,促进面外声子能量传输。这项工作表明,mlp驱动的MD模拟可以作为探测和理解二维异质结构和其他层状材料的热传输机制的新范例。
{"title":"Probing the ideal limit of interfacial thermal conductance in two-dimensional van der Waals heterostructures","authors":"Ting Liang, Ke Xu, Penghua Ying, Wenwu Jiang, Meng Han, Xin Wu, Wengen Ouyang, Yimin Yao, Xiaoliang Zeng, Zhenqiang Ye, Zheyong Fan, Jianbin Xu","doi":"10.1038/s41524-025-01885-y","DOIUrl":"https://doi.org/10.1038/s41524-025-01885-y","url":null,"abstract":"Probing the ideal limit of interfacial thermal conductance (ITC) in two-dimensional (2D) heterointerfaces is of paramount importance for assessing heat dissipation in 2D-based nanoelectronics. Using graphene/hexagonal boron nitride (Gr/h-BN), a structurally isomorphous heterostructure with minimal mass contrast, as a prototype, we develop an accurate yet highly efficient machine-learned potential (MLP) model, which drives nonequilibrium molecular dynamics (NEMD) simulations on a realistically large system with over 300,000 atoms, enabling us to report the ideal limit range of ITC for 2D heterostructures at room temperature. We further unveil an intriguing stacking-sequence-dependent ITC hierarchy in the Gr/h-BN heterostructure, which can be connected to moiré patterns and is likely universal in van der Waals layered materials. The underlying atomic-level mechanisms can be succinctly summarized as energy-favorable stacking sequences facilitating out-of-plane phonon energy transmission. This work demonstrates that MLP-driven MD simulations can serve as a new paradigm for probing and understanding thermal transport mechanisms in 2D heterostructures and other layered materials.","PeriodicalId":19342,"journal":{"name":"npj Computational Materials","volume":"20 1","pages":""},"PeriodicalIF":9.7,"publicationDate":"2025-12-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145705143","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
From Corpus to Innovation: Advancing Organic Solar Cell Design with Large Language Models 从语料库到创新:用大型语言模型推进有机太阳能电池设计
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-08 DOI: 10.1038/s41524-025-01896-9
Harikrishna Sahu, Akhlak Mahmood, Labeeba B. Shafique, Rampi Ramprasad
Advances in machine learning have transformed materials discovery, yet challenges remain due to the lack of informatics-ready data and the complexity of numerical descriptors. Scientific knowledge is scattered across publications, making comprehensive data extraction difficult. This study presents a large language model (LLM)-driven framework to accelerate organic solar cell (OSC) materials discovery by extracting structured data from literature and predicting device performance using natural language embeddings. Trained on a curated dataset of 422 OSC devices, the fine-tuned LLM demonstrated strong predictive accuracy across key performance metrics: power conversion efficiency (PCE, R2: 0.87), short-circuit current (JSC, R2: 0.82), open-circuit voltage (VOC, R2: 0.89), and fill factor (FF, R2: 0.59). The models are then used to explore the space of 1.4 million combinations of materials, experimental variables and device architectures. The analysis provides data-driven design guidelines, identifying optimal donor-acceptor combinations and processing conditions that consistently yield higher device performance.
机器学习的进步已经改变了材料的发现,但由于缺乏信息学就绪数据和数字描述符的复杂性,挑战仍然存在。科学知识分散在出版物中,使全面的数据提取变得困难。本研究提出了一个大型语言模型(LLM)驱动的框架,通过从文献中提取结构化数据和使用自然语言嵌入预测设备性能来加速有机太阳能电池(OSC)材料的发现。在422个OSC器件的数据集上进行训练,经过优化的LLM在关键性能指标上表现出很强的预测准确性:功率转换效率(PCE, R2: 0.87)、短路电流(JSC, R2: 0.82)、开路电压(VOC, R2: 0.89)和填充因子(FF, R2: 0.59)。然后,这些模型被用来探索140万种材料、实验变量和设备架构的组合空间。该分析提供了数据驱动的设计指南,确定了最佳的供体-受体组合和处理条件,从而始终如一地产生更高的设备性能。
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引用次数: 0
PredPotS: web tool for predicting one-electron standard reduction potentials for organic molecules in aqueous phase 预测水相中有机分子的单电子标准还原电位的网络工具
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-07 DOI: 10.1038/s41524-025-01890-1
Flóra B. Németh, Andrea Hamza, Beatrix Tugyi, Maya El-Ali, Luca Szegletes, Ádám Madarász, Imre Pápai
An interactive web tool, PredPotS, has been developed for predicting one-electron standard reduction potentials of organic molecules in aqueous solutions. The predictions are generated using deep learning models trained and validated on a chemically diverse database comprising reduction potentials of approximately 8000 organic compounds. The reduction potentials of this database were computed using a composite computational protocol that combines the semiempirical quantum chemical method (GFN2-xTB) and a well-established DFT approach (M06-2X functional along with the SMD solvent model). While this computational approach is cost-effective, it is subject to certain limitations, which are nonetheless duly accounted for in the development of the database. The applied graph-based deep learning methods perform remarkably well in terms of the standard performance metrics. By entering or uploading the SMILES codes of the molecules, PredPotS provides fast and sensible predictions for one-electron standard reduction potentials for a diverse set of organic molecules also in the range compatible with the electrochemical stability of aqueous electrolytes. The PredPotS web tool is particularly well-suited for screening redox-active candidates for aqueous organic redox flow batteries, but it may also prove useful in a variety of other electrochemical applications.
一个交互式网络工具,PredPotS,已经开发用于预测水溶液中有机分子的单电子标准还原电位。这些预测是使用深度学习模型生成的,该模型在包含大约8000种有机化合物还原势的化学多样性数据库上进行了训练和验证。该数据库的还原势使用复合计算协议进行计算,该计算协议结合了半经验量子化学方法(GFN2-xTB)和成熟的DFT方法(M06-2X泛函以及SMD溶剂模型)。虽然这种计算方法具有成本效益,但它受到某些限制,但在开发数据库时已适当考虑到这些限制。应用的基于图的深度学习方法在标准性能指标方面表现非常好。通过输入或上传分子的SMILES代码,PredPotS为各种有机分子的单电子标准还原电位提供快速和合理的预测,这些有机分子也在与水性电解质的电化学稳定性相容的范围内。PredPotS网络工具特别适合筛选水性有机氧化还原液流电池的氧化还原活性候选物,但它也可能在各种其他电化学应用中发挥作用。
{"title":"PredPotS: web tool for predicting one-electron standard reduction potentials for organic molecules in aqueous phase","authors":"Flóra B. Németh, Andrea Hamza, Beatrix Tugyi, Maya El-Ali, Luca Szegletes, Ádám Madarász, Imre Pápai","doi":"10.1038/s41524-025-01890-1","DOIUrl":"https://doi.org/10.1038/s41524-025-01890-1","url":null,"abstract":"An interactive web tool, PredPotS, has been developed for predicting one-electron standard reduction potentials of organic molecules in aqueous solutions. The predictions are generated using deep learning models trained and validated on a chemically diverse database comprising reduction potentials of approximately 8000 organic compounds. The reduction potentials of this database were computed using a composite computational protocol that combines the semiempirical quantum chemical method (GFN2-xTB) and a well-established DFT approach (M06-2X functional along with the SMD solvent model). While this computational approach is cost-effective, it is subject to certain limitations, which are nonetheless duly accounted for in the development of the database. The applied graph-based deep learning methods perform remarkably well in terms of the standard performance metrics. By entering or uploading the SMILES codes of the molecules, PredPotS provides fast and sensible predictions for one-electron standard reduction potentials for a diverse set of organic molecules also in the range compatible with the electrochemical stability of aqueous electrolytes. The PredPotS web tool is particularly well-suited for screening redox-active candidates for aqueous organic redox flow batteries, but it may also prove useful in a variety of other electrochemical applications.","PeriodicalId":19342,"journal":{"name":"npj Computational Materials","volume":"4 1","pages":""},"PeriodicalIF":9.7,"publicationDate":"2025-12-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145696935","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
Generative AI for crystal structures: a review 晶体结构的生成式AI:综述
IF 9.7 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Pub Date : 2025-12-06 DOI: 10.1038/s41524-025-01881-2
Pierre-Paul De Breuck, Hai-Chen Wang, Gian-Marco Rignanese, Silvana Botti, Miguel A. L. Marques
The rapid rise of generative artificial intelligence is reshaping materials discovery by offering new ways to propose crystal structures and, in some cases, even predict desired properties. This review provides a comprehensive survey of recent advancements in generative models specifically for inorganic crystalline materials. We outline architectures, representations, conditioning mechanisms, data sources, metrics, and applications, and organize existing models into a unified taxonomy.
生成式人工智能的迅速崛起正在重塑材料的发现,它提供了提出晶体结构的新方法,在某些情况下,甚至可以预测所需的性能。本文综述了无机晶体材料生成模型的最新进展。我们概述了体系结构、表示、条件调节机制、数据源、度量和应用程序,并将现有模型组织到统一的分类法中。
{"title":"Generative AI for crystal structures: a review","authors":"Pierre-Paul De Breuck, Hai-Chen Wang, Gian-Marco Rignanese, Silvana Botti, Miguel A. L. Marques","doi":"10.1038/s41524-025-01881-2","DOIUrl":"https://doi.org/10.1038/s41524-025-01881-2","url":null,"abstract":"The rapid rise of generative artificial intelligence is reshaping materials discovery by offering new ways to propose crystal structures and, in some cases, even predict desired properties. This review provides a comprehensive survey of recent advancements in generative models specifically for inorganic crystalline materials. We outline architectures, representations, conditioning mechanisms, data sources, metrics, and applications, and organize existing models into a unified taxonomy.","PeriodicalId":19342,"journal":{"name":"npj Computational Materials","volume":"5 1","pages":""},"PeriodicalIF":9.7,"publicationDate":"2025-12-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145680698","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
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npj Computational Materials
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