(Digital Presentation) Data-Driven Discovery of Luminescent Materials

Rong-Jun Xie
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Abstract

Luminescent materials play an important roles in lighting, display, plant growth, anti-counterfeit, medical and bio-technologies. The search for luminescent materials with desired properties never stops, but relies mostly on the trial-and-error approach, which is time-consuming and labor-intensive. Several methods have been proposed to accelerate the discovery of new luminescent materials, among them the data-driven one attracts much attention. In this presentation, two types of luminescent materials for different applications will be reported. Firstly, we build an emission-prediction model based on machine learning, and using this model found five Eu2+-doped nitride phosphors with highly efficient near-infrared (NIR) emissions. Secondly, we propose selection rules to discover laser phosphors and mechanoluminescent materials based on the structure-property relations, respectively. The applications of these phosphors in NIR detectors, laser lighting and stress mapping will also demonstrated.
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发光材料的数据驱动发现
发光材料在照明、显示、植物生长、防伪、医疗和生物技术等方面发挥着重要作用。寻找具有理想性能的发光材料从未停止,但主要依赖于试错方法,这是耗时和劳动密集型的。人们提出了几种加速新发光材料发现的方法,其中数据驱动的方法备受关注。本报告将介绍两种不同用途的发光材料。首先,我们建立了基于机器学习的发射预测模型,并利用该模型找到了五种具有高效近红外(NIR)发射的Eu2+掺杂氮化物荧光粉。其次,提出了基于结构-性能关系的激光荧光粉和机械发光材料的选择规则。这些荧光粉在近红外探测器,激光照明和应力映射中的应用也将被展示。
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