Unraveling Luminescent Energy Transfer Pathways: Futuristic Approach of Miniature Shortwave Infrared Light-Emitting Diode Design - Open Research Data - Bridge of Knowledge

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Unraveling Luminescent Energy Transfer Pathways: Futuristic Approach of Miniature Shortwave Infrared Light-Emitting Diode Design

Description

Phosphor-converted shortwave infrared phosphor light-emitting diodes (pc-SWIR LEDs, 900–1700 nm) are promising next-generation portable light sources for spectroscopy, security, optical communication, and medical applications. A typical design strategy involves energy transfer from Cr3+ to Ni2+, and thus, energy transfer from Cr3+–Cr3+ pairs to Ni2+ ions is important but challenging. Here, we report a Sr1–xLaxAl5.92Cr0.08Ga6–xO19:xNi2+ (x = 0–0.09) series for the SWIR emissions range of 900–1600 nm due to an energy transfer from Cr3+ and Cr3+–Cr3+ pair to Ni2+. Short-range structural studies using electron paramagnetic resonance and magnetometry measurements reveal that Ni2+ ions likely exist as isolated Ni2+ ions and Cr3+–Ni2+ pairs rather than forming Ni2+–Ni2+ pairs. The fabricated prototype SWIR pc-LED delivers a radiant flux of 12.43 mW under a 350 mA driving current. This dataset provides insights into the codopant strategy for energy transfer and the design of promising next-generation SWIR phosphors.

In that dataset, raw data of excitation (PLE) and emission (PL) spectra, temperature-dependent (TD), and high-pressure (PD) dependent photoluminescence and decay profiles are provided.

Dataset file

Unraveling Luminescent Energy Transfer Pathways Futuristic Approach of Miniature Shortwave Infrared Light-Emitting Diode Design.rar
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File details

License:
Creative Commons: by 4.0 open in new tab
CC BY
Attribution
Raw data:
Data contained in dataset was not processed.
Software:
OriginLab, HPD-TA

Details

Year of publication:
2023
Verification date:
2023-12-21
Dataset language:
English
Fields of science:
  • physical sciences (Natural sciences)
DOI:
DOI ID 10.34808/r1e0-sr60 open in new tab
Verified by:
No verification

Keywords

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