Estonian Research Council [grant PRG2031]

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Estonian Research Council [grant PRG2031]

Authors

Publications

Exploring deep learning and machine learning for novel red phosphor materials

Novita, Mega; Chauhan, Alok Singh; Ujianti, Rizky Muliani Dwi; Marlina, Dian; Kusumo, Haryo; Anwar, Muchamad Taufiq; Piasecki, Michał; Brik, Mikhail G.

(2024)

TY  - JOUR
AU  - Novita, Mega
AU  - Chauhan, Alok Singh
AU  - Ujianti, Rizky Muliani Dwi
AU  - Marlina, Dian
AU  - Kusumo, Haryo
AU  - Anwar, Muchamad Taufiq
AU  - Piasecki, Michał
AU  - Brik, Mikhail G.
PY  - 2024
UR  - https://vinar.vin.bg.ac.rs/handle/123456789/12869
AB  - In the pursuit of enhancing red phosphor materials, integrating Deep Learning (DL) and machine Learning (ML) techniques has emerged as a transformative avenue. Challenges persist, necessitating comprehensive exploration and detailed comparative analysis of methods, focusing on predictive accuracy, interpretability, and computational demands. The role of regression models and their coefficients in material property prediction requires in-depth investigation. A systematic approach was employed, leveraging literature reviews and comparative analyses. Relevant articles were meticulously selected, focusing on methodologies and algorithms in predicting material properties. The study aimed to explore the integration of DL and ML in advancing red phosphor materials, evaluating algorithms and seven different regression models. Linear Regression, Robust Regression, and Lasso Regression emerged as top-performing models in predicting red phosphor material properties, specifically the 2E energy of Mn4+ doped crystals, supported by comprehensive coefficient analysis. This research offers valuable insights, informing the selection of models for specific tasks and optimizing the integration of DL and ML techniques in the field of red phosphor materials.
T2  - Journal of Luminescence
T1  - Exploring deep learning and machine learning for novel red phosphor materials
VL  - 269
SP  - 120476
DO  - 10.1016/j.jlumin.2024.120476
ER  - 
@article{
author = "Novita, Mega and Chauhan, Alok Singh and Ujianti, Rizky Muliani Dwi and Marlina, Dian and Kusumo, Haryo and Anwar, Muchamad Taufiq and Piasecki, Michał and Brik, Mikhail G.",
year = "2024",
abstract = "In the pursuit of enhancing red phosphor materials, integrating Deep Learning (DL) and machine Learning (ML) techniques has emerged as a transformative avenue. Challenges persist, necessitating comprehensive exploration and detailed comparative analysis of methods, focusing on predictive accuracy, interpretability, and computational demands. The role of regression models and their coefficients in material property prediction requires in-depth investigation. A systematic approach was employed, leveraging literature reviews and comparative analyses. Relevant articles were meticulously selected, focusing on methodologies and algorithms in predicting material properties. The study aimed to explore the integration of DL and ML in advancing red phosphor materials, evaluating algorithms and seven different regression models. Linear Regression, Robust Regression, and Lasso Regression emerged as top-performing models in predicting red phosphor material properties, specifically the 2E energy of Mn4+ doped crystals, supported by comprehensive coefficient analysis. This research offers valuable insights, informing the selection of models for specific tasks and optimizing the integration of DL and ML techniques in the field of red phosphor materials.",
journal = "Journal of Luminescence",
title = "Exploring deep learning and machine learning for novel red phosphor materials",
volume = "269",
pages = "120476",
doi = "10.1016/j.jlumin.2024.120476"
}
Novita, M., Chauhan, A. S., Ujianti, R. M. D., Marlina, D., Kusumo, H., Anwar, M. T., Piasecki, M.,& Brik, M. G.. (2024). Exploring deep learning and machine learning for novel red phosphor materials. in Journal of Luminescence, 269, 120476.
https://doi.org/10.1016/j.jlumin.2024.120476
Novita M, Chauhan AS, Ujianti RMD, Marlina D, Kusumo H, Anwar MT, Piasecki M, Brik MG. Exploring deep learning and machine learning for novel red phosphor materials. in Journal of Luminescence. 2024;269:120476.
doi:10.1016/j.jlumin.2024.120476 .
Novita, Mega, Chauhan, Alok Singh, Ujianti, Rizky Muliani Dwi, Marlina, Dian, Kusumo, Haryo, Anwar, Muchamad Taufiq, Piasecki, Michał, Brik, Mikhail G., "Exploring deep learning and machine learning for novel red phosphor materials" in Journal of Luminescence, 269 (2024):120476,
https://doi.org/10.1016/j.jlumin.2024.120476 . .