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Synthesis, Characterization and Application of an Orange-Red-emitting InGaZnO4:Eu3+ Phosphor in Latent Fingerprint and Security Ink

SOLID STATE SCIENCES(2024)

Northwest A&F Univ

Cited 1|Views8
Abstract
A series of orange-red InGaZnO4:xEu(3+) (0.2 mol% <= x <= 20 mol%) phosphors were successfully synthesized via high-temperature solid-state reaction. The structural characterization, morphology, elemental analysis, and optical properties of the prepared phosphors were extensively discussed. Under 468 nm excitation, the prepared phosphors emit orange-red light at 614 nm and 625 nm due to the electric dipole (ED) transition from the D-5(0) to F-7(2) level of Eu3+. The emission peak at 593 nm is attributed to the magnetic dipole (MD) transition. The optimal doping concentration of Eu3+ in the phosphor is 2 mol%, resulting in excellent color purity, with all samples exhibiting purity levels exceeding 99.9 %. Furthermore, the phosphors demonstrate remarkable thermal stability, retaining 73.5 % of their luminescent intensity at 420 K and surpassing a thermal quenching temperature of 480 K. The calculated activation energy (E-a) of InGaZnO4:2 mol%Eu3+ (0.27 eV) further underscores its exceptional thermal stability. The internal quantum efficiency (IQE) of the InGaZnO4:2 mol%Eu3+ phosphor is measured at 46.3 %, indicating a high level of photoelectric conversion efficiency. Latent fingerprints (LFPs) developed using the InGaZnO4:2 mol%Eu3+ phosphor display outstanding selectivity and contrast, allowing for precise identification of Level I-III fingerprint details. Additionally, security ink formulated with InGaZnO4:2 mol%Eu3+ shows potential applications in information encryption and anti-counterfeiting measures. Therefore, the investigated phosphors exhibit significant potential for further development due to their favorable optical properties.
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Key words
Eu3+,Phosphor,InGaZnO4,Latent fingerprint,Security ink
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