Dang Yongchun, Li Zechen, Yu Yongchao, Bai Xiwei, Wang Li, Wang Xuelei, Liu Peng, Sun Chen, Zhou Xunli, Wang Zhenpo, Zhao Yongjie, He Xiangming, Li Lei
National Engineering Research Center of Electric Vehicles, Beijing Co-innovation Centre for Electric Vehicles, Beijing Institute of Technology, Beijing 100081, China.
Beijing Key Laboratory of Construction Tailorable Advanced Functional Materials and Green Applications, School of Materials Science and Engineering, Beijing Institute of Technology, Beijing 100081, China.
Research (Wash D C). 2025 Jul 29;8:0794. doi: 10.34133/research.0794. eCollection 2025.
The limited energy density inherent in cathode materials remains a marked barrier to the widespread adoption of sodium-ion batteries. Despite considerable research efforts, the precise influence of atomic and crystalline configurations on energy density is not yet fully understood, creating a knowledge gap that hinders the rational design of advanced cathode materials. In this study, we propose a machine learning approach to systematically identify promising cathode materials with high energy densities. Our model highlights the critical roles of entropy and equivalent electronegativity, among other properties such as molecular mass, electron affinity, and average ionic radius. Based on these insights, we successfully synthesized NaMnVTiZr(PO) (NMVTZP) electrodes via a sol-gel method. The resulting electrodes exhibit an impressive reversible specific capacity of 148.27 mAh g at a 0.1-C rate, outperforming several previously reported cathode materials. Additionally, the NMVTZP electrodes demonstrate an average operating voltage of 3.14 V, an energy density of 465 Wh kg, and exceptional rate performance, retaining 90.20 mAh g at a 5-C rate. We anticipate that our machine learning approach will accelerate the development of high-performance materials and greatly contribute to the advancement of sodium-ion battery technology.
阴极材料固有的有限能量密度仍然是钠离子电池广泛应用的一个显著障碍。尽管进行了大量研究,但原子和晶体结构对能量密度的确切影响尚未完全了解,这造成了一个知识空白,阻碍了先进阴极材料的合理设计。在本研究中,我们提出了一种机器学习方法,以系统地识别具有高能量密度的有前景的阴极材料。我们的模型突出了熵和等效电负性的关键作用,以及其他诸如分子量、电子亲和能和平均离子半径等性质。基于这些见解,我们通过溶胶-凝胶法成功合成了NaMnVTiZr(PO)(NMVTZP)电极。所得电极在0.1-C倍率下表现出令人印象深刻的148.27 mAh g的可逆比容量,优于先前报道的几种阴极材料。此外,NMVTZP电极展示了3.14 V的平均工作电压、465 Wh kg的能量密度以及出色的倍率性能,在5-C倍率下保持90.20 mAh g的比容量。我们预计,我们的机器学习方法将加速高性能材料的开发,并极大地推动钠离子电池技术的进步。