截止2026年03月01日,论文总被引1286次,h指数15,i10指数21,论文发表详情见ORCID(0000-0002-3923-6315)。 1. C. Xu#(上大2023级硕士,副导师), T. Su#, J. Xiong*, Y. Wu, S. Dong, T. Jiang, M. He*, S. Chen, T.-Y. Zhang*, KAN-enhanced contrastive learning: the accelerator of crystal structure identification from XRD patterns. NPJ Computational Materials 12 (2026). (JCR Q1, IF = 11.9) 2. Z. Liu, M. Wu, M. Zhang, H. Zhang. T Lyu, S. Wu*, J. Xiong*, S. Chen*, T.-Y. Zhang, Simultaneously enhancing the strength and plasticity of AlxCrFeCoNi high-entropy alloys via heterogeneous structure. Acta Materialia 309 (2026) 122058. (JCR Q1, IF = 9.3) 3. Y. Yu, X. Bian*, J. Xiong*, X. Wu, Q. Qian*, AIMatDesign: Knowledge-Augmented Reinforcement Learning for Inverse Materials Design under Data Scarcity. NPJ Computational Materials, 12 (2026) 74. (JCR Q1, IF = 11.9) 4. T. Jiang(上大2023级硕士,副导师), J. Xiong*, T. Su, S. Chen*, T.-Y. Zhang*, Multi-fidelity, active-learning assisted design of TaNbMoVW refractory high-entropy alloys with superior mechanical properties. Journal of Physics: Materials 9 (2026) 025003. (JCR Q1, IF = 4.7) 5. L. Sun(东北大2022级博士,副导师), Q. Ma, C. Pei, H Yao, X. Liu, J. Xiong*, C. Liu*, H Li*, Q. Gao*, Explainable machine learning-enabled dual-objective design of γ' phase characteristic parameters in γ'-strengthened Co-based superalloys. NPJ Computational Materials 11 (2025) 316. (JCR Q1, IF = 11.9). 6. C. Pei, Q. Ma, J. Zhang, L. Yu, H. Li, Q. Gao*, J. Xiong*, A novel model to predict oxidation behavior of superalloys based on machine learning. Journal of Materials Science & Technology 235 (2025) 232-243. (JCR Q1, IF = 14.9, 高被引论文) 7. C. Deng, M. Zheng*, P. Chen, X. C. Li, J. Xiong*, A. Shahboub, L. Luo, An interpretable machine learning model for oxidation corrosion prediction of ferritic/martensitic steels in LBE. Journal of Nuclear Materials (2025) 155998. (JCR Q1, IF =3.2) 8. S. Dong(上大2023级博士,副导师), J. Xiong*, Y. Tian, S. Chen, L. Wei*, T. Y. Zhang*, Design of corrosion-resistant eutectic high-entropy alloys via hybrid data-driven and expert-guided strategies. Corrosion Science (2025) 113024. (JCR Q1, IF = 8.5) 9. J. Wang, Y Lu, X Wang, S Liang, J. Xiong*, L. Zhen*, L. Liu*, Target-driven design of high strength yet corrosion resistant medium Mn steel via interpretable machine-learning. Materials & Design (2025) 115217. (JCR Q1, IF = 7.9) 10. Y. Hu(上大2024级硕士,导师), X. Wang, Z. Gao, H. Xiao, H. Chen*, J. Xiong*, Physics-Guided Multi-Task Learning for Predicting Thermophysical Properties of Ag-In-Cd Absorber Alloys with Extremely Small Data. Nuclear Engineering and Technology (2025) 104061. (JCR Q1, IF=2.6) 11. H. Tian#, Y. Hu#(上大2024级硕士,导师), Z. Ding, J. He*, J. Xiong*, Dynamic physics-guided neural network for predicting hot deformation behavior of TiAl-based intermetallic alloys, Materials Genome Engineering Advances (2025) e70033. 12. H. Tian, J. He*, J. Xiong*, X. Xia, L. Zhao, J. Mei, Y. Qi, T.-Y. Zhang*, Enhancing Thermal Shock Resistance of TiZrCuNi Brazed Joints via Strategic Niobium Addition. Materials Science and Engineering A (2025) 148842 (JCR Q1, IF = 7.0). 13. H. Tian, J. Xiong*, L. Zhao, J. Mei, Y. Qi, J. He*, T.-Y. Zhang*, Achieving superior strength and ductility in TiAl/Ti2AlNb dissimilar brazed joints by controlling the brittle Zr (Ni, Cu)3 intermetallic compound. Materials Science and Engineering A (2025) 148225. (JCR Q1, IF = 7.0) 14. J. Ma, B. Cao, S. Dong, Y. Tian, M. Wang, J. Xiong*, S Sun*. MLMD: a programming-free AI platform to predict and design materials. NPJ Computational Materials 10 (2024) 59. (JCR Q1, IF = 11.9) 15. Y. Yu, J. Xiong*, X. Wu, Q. Qian*, From Small Data Modeling to Large Language Model Screening: A Dual-Strategy Framework for Materials Intelligent Design. Advanced Science 11 (2024) 2403548 (JCR Q1, IF = 14.7) 16. Y. Wu, T. Su, B. Du, S. Hu*, J. Xiong*, D. Pan*, Kolmogorov-arnold network made learning physics laws simple. The Journal of Physical Chemistry Letters 15 (2024) 12393-12400 (JCR Q1, IF = 6.7) 17. S. Zhang(上大2021级硕士,副导师)#, B Cao#, T. Su, Y. Wu, Z. Feng, J. Xiong*, T.-Y. Zhang*, Crystallographic phase identifier of a convolutional self-attention neural network (CPICANN) on powder diffraction patterns. IUCrJ 11 (2024) 634-642 (JCR Q1, IF = 3.6). 18. J. Xiong*, B. W. Bai*, H. R. Jiang, A. Faus-Golfe. Determinants of saturation magnetic flux density in Fe-based metallic glasses: insights from machine-learning models. Rare Metals 43 (2024) 5256-5267. (JCR Q1, IF =11.0) 19. J. Xiong, J. He*, X. S. Leng*, T.-Y. Zhang*, Gaussian process regressions on hot deformation behaviors of FGH98 Nickel-based powder superalloy. Journal of Materials Science & Technology 146 (2023) 177-185. (JCR Q1, IF =14.7) 20. J. Xiong*, T.-Y. Zhang*. Data-driven glass-forming ability criterion for bulk amorphous metals with data augmentation. Journal of Materials Science & Technology 121 (2022) 99-104. (JCR Q1, IF =14.7) 21. J. Xiong, S. Shi*, T.-Y. Zhang*. Machine learning of phases and mechanical properties in complex concentrated alloys. Journal of Materials Science & Technology 87 (2021) 133-142. (JCR Q1, IF =14.7) 22. J. Xiong, T.-Y. Zhang*, S. Shi*. Machine learning of mechanical properties of steels. Science China Technological Science 63 (2020) 1247-1255. (JCR Q1, IF = 4.9, 年度高影响力论文) 23. J. Xiong, S. Shi*, T.-Y. Zhang*. A machine-learning approach to predicting and understanding the properties of amorphous metallic alloys. Materials & Design 187 (2020) 108378. (JCR Q1, IF = 7.9) |