• Journal of Inorganic Materials
  • Vol. 34, Issue 8, 885 (2019)
Li-Yan ZHANG1, Hong LI2, Li-Li HU1, and Ya-Jie WANG1、3
Author Affiliations
  • 1Key Laboratory of Materials for High Power Laser, Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences, Shanghai 201815, China
  • 2Nippon Electric Glass, Shelby, North Carolina 28150, USA
  • 3University of Chinese Academy of Sciences, Beijing 100049, China
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    DOI: 10.15541/jim20180514 Cite this Article
    Li-Yan ZHANG, Hong LI, Li-Li HU, Ya-Jie WANG. Structure Modeling of Genes in Glass: Composition-structure-property Approach[J]. Journal of Inorganic Materials, 2019, 34(8): 885 Copy Citation Text show less

    Abstract

    A statistical modeling approach to modeling glass composition (C) - structure (S) - property (P) is introduced based on glass property response to the glass network structure. This paper first reviewed some of the limitations of the C-P statistical modeling approach, then followed by complementary benefit identified from using S-P statistical modeling approach. Furthermore, S-P modeling is not limited by a narrower composition space as seen in the C-P modeling case, which benefits glass composition fine-tuning and design optimization, such as in the chemical stability experiment for Nd: phosphate laser glass, the S-P models perform much better than the C-P models. The procedure of C-S-P modeling was illustrated, and how to use C-S and S-P models inverse the composition of glass was also detailed. Except for the regular properties, C-S-P modeling methodology can provide more accurate predictions on laser glass emission properties, chemical durability, etc., which are often difficult by using the C-P modeling approach alone. Our effort on C-S-P modeling is to explore a general methodology that can provide researchers with an alternative method to facilitate glass design with higher efficiency, fast turn-around, and high accuracy and precision.
    Li-Yan ZHANG, Hong LI, Li-Li HU, Ya-Jie WANG. Structure Modeling of Genes in Glass: Composition-structure-property Approach[J]. Journal of Inorganic Materials, 2019, 34(8): 885
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