解码方法
直线(几何图形)
零(语言学)
寄主(生物学)
锰
声子
钥匙(锁)
物理
材料科学
凝聚态物理
计算机科学
生物
数学
算法
遗传学
语言学
哲学
几何学
计算机安全
冶金
作者
Jinxin Wang,Yajie Dou,Jiahua Zhang,Mingyue Chen,Zhen Song,Quanlin Liu
标识
DOI:10.1021/acs.jpcc.5c05715
摘要
Achieving wide color gamut in liquid crystal displays relies critically on narrow-band red-emitting phosphors. Mn4+-activated phosphors are promising candidates due to their sharp emission, yet modulating their zero-phonon line wavelengths remains challenging. This study employs machine learning to decode host–Mn4+ interactions across 65 distinct hosts (42 fluorides, 6 fluoroxides, 17 oxides). By extracting 29 structural descriptors and leveraging a random forest regression model, we identify nine key features governing ZPL wavelengths. Electronegativity-related parameters dominate (77.83% cumulative importance), while geometric factors (bond angles, distances) also contribute significantly. The model achieves high accuracy (test MAE = 4.133 nm, R2 = 0.928), revealing that high electronegativity in secondary-coordination ions enhances Mn–ligand covalency, reducing the Eg → 4A2g transition energy and redshifting the emission peak wavelengths. This work identifies key design principles for Mn4+-activated fluoride, oxide, and oxyfluoride phosphors, enabling a targeted strategy for discovering next-generation narrow-band red emitters.
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