生成语法
电介质
储能
电容感应
生成模型
陶瓷
计算机科学
材料科学
纳米技术
人工智能
光电子学
物理
复合材料
功率(物理)
量子力学
操作系统
作者
Wei Li,Zhonghui Shen,Run‐Lin Liu,Xiaoxiao Chen,Mengfan Guo,Jin-Ming Guo,Hua Hao,Yang Shen,Hanxing Liu,Long‐Qing Chen,Ce‐Wen Nan
标识
DOI:10.1038/s41467-024-49170-8
摘要
Abstract Dielectric capacitors offer great potential for advanced electronics due to their high power densities, but their energy density still needs to be further improved. High-entropy strategy has emerged as an effective method for improving energy storage performance, however, discovering new high-entropy systems within a high-dimensional composition space is a daunting challenge for traditional trial-and-error experiments. Here, based on phase-field simulations and limited experimental data, we propose a generative learning approach to accelerate the discovery of high-entropy dielectrics in a practically infinite exploration space of over 10 11 combinations. By encoding-decoding latent space regularities to facilitate data sampling and forward inference, we employ inverse design to screen out the most promising combinations via a ranking strategy. Through only 5 sets of targeted experiments, we successfully obtain a Bi(Mg 0.5 Ti 0.5 )O 3 -based high-entropy dielectric film with a significantly improved energy density of 156 J cm −3 at an electric field of 5104 kV cm −1 , surpassing the pristine film by more than eight-fold. This work introduces an effective and innovative avenue for designing high-entropy dielectrics with drastically reduced experimental cycles, which could be also extended to expedite the design of other multicomponent material systems with desired properties.
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