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BULLETIN OF THE CHINESE CERAMIC SOCIETY ›› 2026, Vol. 45 ›› Issue (3): 961-973.DOI: 10.16552/j.cnki.issn1001-1625.2025.1102

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Research Progress of High-Modulus Glass Fibers

WEI Yaopeng1(), FU Jianhao1, QIAN Zhaoqing1, HE Ran1, CAO Yi2, LU Yadong1, MA Tianchen1, KANG Junfeng1()   

  1. 1.School of Materials Science and Engineering,University of Jinan,Jinan 250022,China
    2.School of Information Science and Engineering,University of Jinan,Jinan 250022,China
  • Received:2025-11-10 Revised:2026-01-01 Online:2026-03-20 Published:2026-04-10
  • Contact: KANG Junfeng

Abstract:

High-modulus glass fibers possess high strength, high-temperature resistance, corrosion resistance, excellent impact resistance, and electrical insulation. They serve as key reinforcement materials in wind turbine blades, new energy vehicles, aerospace, and other fields. This review summarizes the development history, typical products, and performance characteristics of high-modulus glass fibers, and discusses the intrinsic relationship between their microstructural features and macroscopic modulus. This paper expounds the evolution of chemical composition of high-modulus glass fibers, the applicable conditions of the aluminum avoidance principle in the aluminosilicate glass system, and the influence of structural units such as high-coordination aluminum and tri-cluster oxygen on elasticity modulus. The theoretical foundations and various computational models for predicting elasticity modulus are systematically outlined, including the classical Makishima-Mackenzie (M-M) model, molecular dynamics simulation, topological constraint theory and its modifications. The machine learning is introduced to explore its role in composition design and property prediction.

Key words: glass fiber, high-modulus, molecular dynamics simulation, machine learning, high-coordination aluminum, tri-cluster oxygen

CLC Number: