Cr3+基近红外荧光粉的机器学习辅助发现

IF 7 2区 材料科学 Q2 CHEMISTRY, PHYSICAL
Amit Kumar, Arslan Akbar, Hannah Lesmes, Seán R. Kavanagh, David O. Scanlon, Jakoah Brgoch
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引用次数: 0

摘要

Cr3+取代无机荧光粉表现出三种不同的近红外(NIR)光致发光峰形状,通常落在650 ~ 950 nm之间。八面体配位的Cr3+离子的确切位置和形状取决于(弱、中、强)晶体场分裂环境。这些发射特性通常用Dq/B比值来量化,其中Dq代表晶体场分裂参数,B代表Racah参数。因此,精确了解这一比例对于设计基于Cr3+的近红外荧光粉,用于生物医学成像、夜视、食品质量分析和发光测温等应用至关重要。不幸的是,由于组成、结构和局部配位环境之间复杂的相互作用,在固态中定位特定的Dq/B值仍然是不容易的。为了解决这一挑战,我们开发了一个机器学习回归模型,能够预测193个实验确定的Dq/B值及其相关的组成和结构特征。然后,我们应用它估计了6060多个已知的具有潜在八面体Cr3+取代位点的无机结构的Dq/B值。从该列表中选择了代表一系列晶体场环境的8个荧光粉载体Y2Mg3Ge3O12、YInGe2O7、LiInW2O6、Gd3SbO7、Ba2ScTaO6、Ba2MgWO6、LiLaMgWO6和Ca3MgSi2O8进行了合成和表征。他们测量的Dq/B值与模型预测非常吻合,证明了这种机器学习框架在加速发现特定应用的Cr3+取代近红外荧光粉方面的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine-Learning-Assisted Discovery of Cr3+-Based Near-Infrared Phosphors

Machine-Learning-Assisted Discovery of Cr3+-Based Near-Infrared Phosphors
Cr3+-substituted inorganic phosphors exhibit three distinct near-infrared (NIR) photoluminescence emission peak shapes that typically fall between 650 and 950 nm. The exact position and shape are governed by the (weak, intermediate, or strong) crystal field splitting environment of the octahedrally coordinated Cr3+ ions. These emission characteristics are commonly quantified by the Dq/B ratio, where Dq represents the crystal field splitting parameter and B is the Racah parameter. Precise knowledge of this ratio is therefore critical for designing Cr3+-based NIR phosphors for applications like biomedical imaging, night vision, food quality analysis, and luminescence thermometry. Unfortunately, targeting specific Dq/B values in the solid state remains nontrivial due to the complex interplay between the composition, structure, and local coordination environment. To address this challenge, we developed a machine-learned regression model capable of predicting Dq/B trained on 193 experimentally determined Dq/B values and their associated compositional and structural features. We then applied it to estimate the Dq/B values of over 6060 known inorganic structures with potential octahedral Cr3+ substitution sites. Eight phosphor hosts, Y2Mg3Ge3O12, YInGe2O7, LiInW2O6, Gd3SbO7, Ba2ScTaO6, Ba2MgWO6, LiLaMgWO6, and Ca3MgSi2O8, representing a range of crystal field environments were selected from this list for synthesis and characterization. Their measured Dq/B values closely match model predictions, demonstrating the utility of this machine-learning framework for accelerating the discovery of application-specific Cr3+-substituted NIR phosphors.
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来源期刊
Chemistry of Materials
Chemistry of Materials 工程技术-材料科学:综合
CiteScore
14.10
自引率
5.80%
发文量
929
审稿时长
1.5 months
期刊介绍: The journal Chemistry of Materials focuses on publishing original research at the intersection of materials science and chemistry. The studies published in the journal involve chemistry as a prominent component and explore topics such as the design, synthesis, characterization, processing, understanding, and application of functional or potentially functional materials. The journal covers various areas of interest, including inorganic and organic solid-state chemistry, nanomaterials, biomaterials, thin films and polymers, and composite/hybrid materials. The journal particularly seeks papers that highlight the creation or development of innovative materials with novel optical, electrical, magnetic, catalytic, or mechanical properties. It is essential that manuscripts on these topics have a primary focus on the chemistry of materials and represent a significant advancement compared to prior research. Before external reviews are sought, submitted manuscripts undergo a review process by a minimum of two editors to ensure their appropriateness for the journal and the presence of sufficient evidence of a significant advance that will be of broad interest to the materials chemistry community.
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