硅氧烷
结晶
单体
高分子化学
化学
材料科学
高分子科学
化学工程
有机化学
聚合物
工程类
作者
Ruirui Shi,Jinghao Hao,Han Liu,Yan Chen,Shiping Zhan,Haifeng Lu,Nijuan Sun,Hua Wang,Chuanjian Zhou
出处
期刊:Macromolecules
[American Chemical Society]
日期:2025-08-22
卷期号:58 (17): 9483-9493
标识
DOI:10.1021/acs.macromol.5c01642
摘要
The stereochemistry of polymers governs their macroscopic mechanical and thermodynamic properties by regulating chain packing and crystallization behavior. Although the stereochemistry–structure–property relationship has been well-elucidated in symmetrically substituted polysiloxanes, it remains highly complex in asymmetrically substituted counterparts due to the propensity for siloxane backbone rearrangement. Taking asymmetrically substituted poly(methyl(3,3,3-trifluoropropyl)siloxane) (PMTFPS) as a model system, this study quantitatively characterizes its stereochemical configuration using 19F NMR spectroscopy and systematically elucidates the relationship between the feed ratio of cis-1,3,5-tris(3,3,3-trifluoropropyl)methylcyclotrisiloxane (cis-D3F) and the stereoregularity of PMTFPS. The results reveal that when the cis-D3F content exceeds 58%, the resulting PMTFPS exhibits typical features of isotactic polymers and displays semicrystalline behavior. With increasing isotacticity, the d-spacing of the crystalline phase gradually decreases, and the crystal morphology transitions from fibrous and lamellar structures to spherulitic domains under nonisothermal crystallization. Further mechanical testing demonstrates that silica-reinforced PMTFPS elastomers with high stereoregularity exhibit a pronounced self-reinforcement effect, attributed to enhanced strain-induced crystallization (SIC). This work not only uncovers the intrinsic correlations among stereochemical configuration, crystalline structure, crystallization kinetics, and macroscopic properties of PMTFPS but also offers valuable guidance for the stereochemical regulation and molecular design of high-performance asymmetrically substituted polysiloxanes.
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