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期刊介绍 |
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《npj 计算材料学》是在线出版、完全开放获取的国际学术期刊。发表结合计算模拟与设计的材料学一流的研究成果。本刊由中国科学院上海硅酸盐研究所与英国自然出版集团(Nature Publishing Group,NPG)以伙伴关系合作出版。 主编为陈龙庆博士,美国宾州大学材料科学与工程系、工程科学与力学系、数学系的杰出教授。共同主编为陈立东研究员,中国科学院上海硅酸盐研究所研究员高性能陶瓷与超微结构国家重点实验室主任。 办刊目的与报道范围 《npj 计算材料学》是在线出版、完全开放获取的国际学术期刊,... 【查看详细】 |
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Peculiar band geometry induced giant shift current in ferroelectric SnTe monolayer Gan Jin & Lixin He npj Computational Materials 10: 23 (2024); Published online: 29 January 2024 Editorial Summary Giant Photocurrent Effect in Two-Dimensional Ferroelectric SnTe: driven by the Monopole Quantum Potential Fields Arising from Peculiar Band Structures. The Bulk Photovoltaic Effect (BPVE) is a phenomenon in which light-induced electrical current or voltage is generated in non-centrosymmetric m... |
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Full-landscape selection rules of electrons and phonons and temperature-induced effects in 2D silicon and germanium allotropes Le Shu, Yujie Xia, Ben Li, Lei Peng, Hezhu Shao, Zengxu Wang, Yan Ce, Heyuan Zhu & Hao Zhang npj Computational Materials 10: 2 (2024); Published online: 02 January 2024 Editorial Summary Electrons and phonons scattering: Importance of selection rules The search for materials with a high thermoelectric figure of merit (zT) has attracted lots of attention for centur... |
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Efficient first-principles electronic transport approach to complex band structure materials: the case of n-type Mg3Sb2 Zhen Li, Patrizio Graziosi & Neophytos Neophytou npj Computational Materials 10: 9 (2024); Published online: 06 Jan 2024 Editorial Summary First-principles electronic transport approach: Efficiency, robustness, and flexibility Transport parameters are crucial for novel material deployment in a variety of technological applications, including solar cells, solid-sta... |
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Structure-aware graph neural network based deep transfer learning framework for enhanced predictive analytics on diverse materials datasets Vishu Gupta, Kamal Choudhary, Brian DeCost, Francesca Tavazza, Carelyn Campbell, Wei-keng Liao, Alok Choudhary & Ankit Agrawal npj Computational Materials10: 1 (2024) Editorial Summary Structure-aware graph neural network: Enhanced prediction of material properties Accurate materials property prediction using crystal structure occupies a pri... |
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Obtaining auxetic and isotropic metamaterials in counterintuitive design spaces: an automated optimization approach and experimental characterization Timon Meier, Runxuan Li, Stefanos Mavrikos, Brian Blankenship, Zacharias Vangelatos, M. Erden Yildizdag & Costas P. Grigoropoulos npj Computational Materials 10: 3 (2023) Editorial Summary Theoretical Design of Metamaterials with Unique Mechanical Properties The design of mechanical materials with tailored properties has been subject of signif... |
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Atomistic fracture in bcc iron revealed by active learning of Gaussian approximation potential Lei Zhang, Gábor Csányi, Erik van der Giessen & Francesco Maresca npj Computational Materials 9: 217 (2023); Published online: 08 Dec 2023 Editorial Summary Crack-tip deformation mechanism in bcc iron: dislocation emission VS. cleavage? Active learning interatomic potential! The prediction of atomistic fracture mechanisms in body-centred cubic (bcc) iron is essential for understanding its... |
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An interpretable machine learning strategy for pursuing high piezoelectric coefficients in (K0.5Na0.5)NbO3-based ceramics Bowen Ma, Xiao Wu, Chunlin Zhao, Cong Lin, Min Gao, Baisheng Sa & Zhimei Sun npj Computational Materials 9: 229 (2023); Published online: 22 December 2023 Editorial Summary Machine learning for interpretable KNN ceramic high piezoelectric coefficients: fast and good? People have invested a lot of time and energy in making piezoelectric ceramics lead-free. Through cumbe... |
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Tunable ferroelectricity in oxygen-deficient perovskites with Grenier structure Yongjin Shin & Giulia Galli npj Computational Materials 9: 218 (2023). Editorial Summary Tunable ferroelectricity in Grenier perovskites Ferroelectric materials have found many interesting applications in electronic and memory devices, and understanding and engineering their properties is a topic of great interest in condensed matter physics and materials science. Ferroelectricity can be realized in materi... |
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Towards understanding structure–property relations in materials with interpretable deep learning Tien-Sinh Vu, Minh-Quyet Ha, Duong-Nguyen Nguyen, Viet-Cuong Nguyen, Yukihiro Abe, Truyen Tran, Huan Tran, Hiori Kino, Takashi Miyake, Koji Tsuda & Hieu-Chi Dam npj Computational Materials9: 215 (2023) Editorial Summary Understanding structure–property relations in materials: Interpretable deep learning A central challenge in the field of materials science involves the use of both exp... |
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Single-model uncertainty quantification in neural network potentials does not consistently outperform model ensembles Aik Rui Tan, Shingo Urata, Samuel Goldman, Johannes C. B. Dietschreit & Rafael Gómez-Bombarelli npj Computational Materials 9: 225 (2023) Editorial Summary Neural network potentials: Who has the best performance of uncertainty quantification Over the last decade, neural networks (NN) have increasingly been deployed to study complex materials systems. NN interatomic ... |
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