材料科学
煅烧
陶瓷
微晶
纳米技术
吞吐量
工艺工程
化学工程
计算机科学
冶金
催化作用
生物化学
化学
工程类
电信
无线
作者
Udo Eckstein,Michel Kuhfuß,Tobias Fey,Kyle G. Webber
标识
DOI:10.1002/adem.202302126
摘要
Recent advances in machine learning capabilities have increased interest in materials research to improve the efficiency of materials discovery and optimization as well as to better understand the underlying phenomena responsible for the observed physical properties. While combinatorial chemistry and compositional engineering is well established in the development of pharmaceutical and chemical products, its use in the field of bulk functional polycrystalline ceramics is far from mature. In this work, a critical review of a high‐throughput powder‐based dispensing system is provided and the challenges involved with the transition from a conventional, human resources intensive workflow to a fully automated process are highlighted. Based on the lead‐free piezoelectric BiFeO 3 –BaTiO 3 binary system, the applicability and robustness of high‐throughput engineering is investigated to increase data point density in phase diagrams, including the composition variations of the resulting materials. This work presents 16 different BiFeO 3 –BaTiO 3 compositions at four different calcination temperatures, both demonstrating the potential of the system. This is coupled to automated crystal structure analysis, which will be used to investigate the role of calcination temperature on the resulting compositions at room temperature.
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