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Machine learning-assisted luminescence thermometry using Mn5 + -doped near-infrared phosphor with improved accuracy and precision

Authorized Users Only
2026
Authors
Kuzman, Sanja
Dramićanin, Miroslav
Ćirić, Aleksandar
Periša, Jovana
Milićević, Bojana
Antić, Željka
Ristić, Zoran
Article (Published version)
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Abstract
This study provides a thorough investigation of machine learning-assisted luminescent thermometry using a Mn5+-doped Ca6Ba(PO4)4O phosphor. A novel, slightly modified Principal Component Analysis (PCA), where data normalization was observation-based rather than feature-based, was used to analyze near-infrared emission spectra collected over a temperature range of 293–373 K. This method showed significantly improved thermometric performance compared to traditional single-parameter and multiparametric approaches. Based on statistical analysis of cross-validation experimental data, the PCA-based method achieved exceptional average temperature resolution (δT = 0.135 K) and accuracy (ΔT = 0.077 K) across the entire temperature range, with even better performance in the physiological temperature range (δTphy = 0.074 K, ΔTphy = 0.032 K). This method utilizes full spectral data through dimensionality reduction, offering insights into the most thermometrically significant spectral regions while... keeping the computation simple with basic mathematical operations. Compared to traditional thermometry techniques, which involve calculating emission band intensity ratios, finding spectral positions, and fitting emission decays, PCA-assisted thermometry greatly simplifies and speeds up the computational process, while also enhancing the accuracy and precision of temperature measurement.

Keywords:
Luminescent thermometry / Principal component analysis / Manganese-doped phosphors / Machine learning / Temperature sensing / Near-infrared emission
Source:
Sensors and Actuators A: Physical, 2026, 397, 117292-
Funding / projects:
  • Ministry of Science, Technological Development and Innovation of the Republic of Serbia, institutional funding - 200017 (University of Belgrade, Institute of Nuclear Sciences 'Vinča', Belgrade-Vinča) (RS-MESTD-inst-2020-200017)
  • REMTES - Technology for Remote Temperature Measurements in Microfluidic Devices (RS-ScienceFundRS-Prizma2023_TT-7017)

DOI: 10.1016/j.sna.2025.117292

ISSN: 0924-4247

[ Google Scholar ]
URI
https://vinar.vin.bg.ac.rs/handle/123456789/15996
Collections
  • Radovi istraživača
  • REMTES
Institution/Community
Vinča
TY  - JOUR
AU  - Kuzman, Sanja
AU  - Dramićanin, Miroslav
AU  - Ćirić, Aleksandar
AU  - Periša, Jovana
AU  - Milićević, Bojana
AU  - Antić, Željka
AU  - Ristić, Zoran
PY  - 2026
UR  - https://vinar.vin.bg.ac.rs/handle/123456789/15996
AB  - This study provides a thorough investigation of machine learning-assisted luminescent thermometry using a Mn5+-doped Ca6Ba(PO4)4O phosphor. A novel, slightly modified Principal Component Analysis (PCA), where data normalization was observation-based rather than feature-based, was used to analyze near-infrared emission spectra collected over a temperature range of 293–373 K. This method showed significantly improved thermometric performance compared to traditional single-parameter and multiparametric approaches. Based on statistical analysis of cross-validation experimental data, the PCA-based method achieved exceptional average temperature resolution (δT = 0.135 K) and accuracy (ΔT = 0.077 K) across the entire temperature range, with even better performance in the physiological temperature range (δTphy = 0.074 K, ΔTphy = 0.032 K). This method utilizes full spectral data through dimensionality reduction, offering insights into the most thermometrically significant spectral regions while keeping the computation simple with basic mathematical operations. Compared to traditional thermometry techniques, which involve calculating emission band intensity ratios, finding spectral positions, and fitting emission decays, PCA-assisted thermometry greatly simplifies and speeds up the computational process, while also enhancing the accuracy and precision of temperature measurement.
T2  - Sensors and Actuators A: Physical
T1  - Machine learning-assisted luminescence thermometry using Mn5 + -doped near-infrared phosphor with improved accuracy and precision
VL  - 397
SP  - 117292
DO  - 10.1016/j.sna.2025.117292
ER  - 
@article{
author = "Kuzman, Sanja and Dramićanin, Miroslav and Ćirić, Aleksandar and Periša, Jovana and Milićević, Bojana and Antić, Željka and Ristić, Zoran",
year = "2026",
abstract = "This study provides a thorough investigation of machine learning-assisted luminescent thermometry using a Mn5+-doped Ca6Ba(PO4)4O phosphor. A novel, slightly modified Principal Component Analysis (PCA), where data normalization was observation-based rather than feature-based, was used to analyze near-infrared emission spectra collected over a temperature range of 293–373 K. This method showed significantly improved thermometric performance compared to traditional single-parameter and multiparametric approaches. Based on statistical analysis of cross-validation experimental data, the PCA-based method achieved exceptional average temperature resolution (δT = 0.135 K) and accuracy (ΔT = 0.077 K) across the entire temperature range, with even better performance in the physiological temperature range (δTphy = 0.074 K, ΔTphy = 0.032 K). This method utilizes full spectral data through dimensionality reduction, offering insights into the most thermometrically significant spectral regions while keeping the computation simple with basic mathematical operations. Compared to traditional thermometry techniques, which involve calculating emission band intensity ratios, finding spectral positions, and fitting emission decays, PCA-assisted thermometry greatly simplifies and speeds up the computational process, while also enhancing the accuracy and precision of temperature measurement.",
journal = "Sensors and Actuators A: Physical",
title = "Machine learning-assisted luminescence thermometry using Mn5 + -doped near-infrared phosphor with improved accuracy and precision",
volume = "397",
pages = "117292",
doi = "10.1016/j.sna.2025.117292"
}
Kuzman, S., Dramićanin, M., Ćirić, A., Periša, J., Milićević, B., Antić, Ž.,& Ristić, Z.. (2026). Machine learning-assisted luminescence thermometry using Mn5 + -doped near-infrared phosphor with improved accuracy and precision. in Sensors and Actuators A: Physical, 397, 117292.
https://doi.org/10.1016/j.sna.2025.117292
Kuzman S, Dramićanin M, Ćirić A, Periša J, Milićević B, Antić Ž, Ristić Z. Machine learning-assisted luminescence thermometry using Mn5 + -doped near-infrared phosphor with improved accuracy and precision. in Sensors and Actuators A: Physical. 2026;397:117292.
doi:10.1016/j.sna.2025.117292 .
Kuzman, Sanja, Dramićanin, Miroslav, Ćirić, Aleksandar, Periša, Jovana, Milićević, Bojana, Antić, Željka, Ristić, Zoran, "Machine learning-assisted luminescence thermometry using Mn5 + -doped near-infrared phosphor with improved accuracy and precision" in Sensors and Actuators A: Physical, 397 (2026):117292,
https://doi.org/10.1016/j.sna.2025.117292 . .

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