表征(材料科学)
钙钛矿(结构)
材料科学
烧结
纳米技术
计算机科学
吞吐量
电介质
无线
化学工程
光电子学
电信
工程类
冶金
作者
Mojan Omidvar,Hangfeng Zhang,Achintha Ihalage,Theo Saunders,Henry Giddens,Derek Michael Forrester,Sajad Haq,Yang Hao
标识
DOI:10.1038/s41467-024-50884-y
摘要
Accelerating perovskite solid solution discovery and sustainable synthesis is crucial for addressing challenges in wireless communication and biosensors. However, the vast array of chemical compositions and their dependence on factors such as crystal structure, and sintering temperature require time-consuming manual processes. To overcome these constraints, we introduce an automated materials discovery approach encompassing machine learning (ML) assisted material screening, robotic synthesis, and high-throughput characterization. Our proposed platform for rapid sintering and dielectric analysis streamlines the characterization of perovskites and the discovery of disordered materials. The setup has been successfully validated, demonstrating processing materials within minutes, in stark contrast to conventional procedures that can take hours or days. Following setup validation with established samples, we showcase synthesizing single-phase solid solutions within the barium family, such as (BaxSr1-x)CeO3, identified through ML-guided chemistry.
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