4.8 Article

Modeling Polyhedron Distortion for Mechanoluminescence in Mixed-Anion Compounds RE2O2S:Ln3+

Journal

CHEMISTRY OF MATERIALS
Volume 34, Issue 11, Pages 5311-5319

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.chemmater.2c01230

Keywords

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Funding

  1. National Natural Science Foundation of China [52172156, 51872247, 51832005]
  2. Fundamental Research Funds for the Central Universities [20720200075, 2021G2262]
  3. Young Elite Scientists Sponsorship Program by China Association for Science and Technology [2018QNRC001]

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Mechanoluminescent (ML) materials have broad application prospects, but existing materials cannot meet the requirements of different stress sensing applications. This study reports novel ML materials with excellent self-recoverable ML performance and proposes a polyhedron distortion model to explain the mechanoluminescence mechanism.
Mechanoluminescent (ML) materials with the characteristics of photon emission under mechanical stimulation show broad application prospects in building structural health diagnosis, biomechanical engineering, and wearable devices. However, existing ML materials cannot fully meet the requirements of different stress sensing applications due to the limited understanding of the structure and mechano-to-photon conversion mechanism of ML materials. Herein, we report novel ML materials with excellent self-recoverable ML performance in the family of mixed-anion compounds RE2O2S:Ln(3+) (RE = Y, Lu, La, Gd). The ML intensity is linearly related to the applied force, and the ML wavelength is tunable over a broad range of 514-1550 nm. More importantly, we construct a polyhedron distortion model that describes the local symmetry breaking. This model well explains the origin of ML and piezoelectricity in the compounds with centrosymmetric crystal structures. The findings may deepen the understanding of the microstructure and the mechano-to-photon conversion mechanism in ML materials and are expected to provide important guidance for the development of high-performance ML materials.

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