线性阶梯生长聚合中的环化

IF 5.2 1区 化学 Q1 POLYMER SCIENCE
Yinghao Li, , , Jing Lyu*, , and , Wenxin Wang*, 
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引用次数: 0

摘要

分子内环化是阶梯生长聚合(SGPs)中普遍存在但经常被忽视的因素,特别是在稀释条件下。虽然实验研究已经证实了浓度对环化的显著影响,但缺乏深入的理论认识限制了指导反应设计和预测聚合物结构的能力。在这项工作中,我们采用逆向工程策略,从经典的A2 + B2阶跃生长聚合体系的实验数据中提取环化相关方程。通过将解析推导与符号回归(一种生成封闭形式表达式的机器学习技术)相结合,我们得到了环化概率、环化度、线性聚合度和分子量作为单体转化率和反应浓度函数的显式公式。这些表达式捕捉了环化的动态性质,并在广泛的浓度范围内与实验结果表现出极好的一致性。我们的工作提供了一个新的定量框架,将环化纳入SGP理论,并为预测现实条件下的分子结构和性质提供了实用的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Cyclization in Linear Step-Growth Polymerizations

Cyclization in Linear Step-Growth Polymerizations

Intramolecular cyclization is a pervasive yet often ignored factor in step-growth polymerizations (SGPs), particularly under dilute conditions. While experimental studies have confirmed the significant impact of concentration on cyclization, the lack of deep theoretical understanding has limited the ability to guide reaction design and predict the polymer structure. In this work, we adopt a reverse-engineering strategy to extract cyclization-related equations from experimental data using a classical A2 + B2 step-growth polymerization system. By combining analytical derivations with symbolic regression, a machine learning technique for generating closed-form expressions, we obtain explicit formulas for cyclization probability, degree of cyclization, degree of linear polymerization, and molecular weights as functions of monomer conversion and reaction concentration. These expressions capture the dynamic nature of cyclization and demonstrate excellent agreement with experimental results across a broad concentration range. Our work provides a new quantitative framework to incorporate cyclization into SGP theory and offers practical tools for predicting molecular structures and properties under real-world conditions.

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来源期刊
Macromolecules
Macromolecules 工程技术-高分子科学
CiteScore
9.30
自引率
16.40%
发文量
942
审稿时长
2 months
期刊介绍: Macromolecules publishes original, fundamental, and impactful research on all aspects of polymer science. Topics of interest include synthesis (e.g., controlled polymerizations, polymerization catalysis, post polymerization modification, new monomer structures and polymer architectures, and polymerization mechanisms/kinetics analysis); phase behavior, thermodynamics, dynamic, and ordering/disordering phenomena (e.g., self-assembly, gelation, crystallization, solution/melt/solid-state characteristics); structure and properties (e.g., mechanical and rheological properties, surface/interfacial characteristics, electronic and transport properties); new state of the art characterization (e.g., spectroscopy, scattering, microscopy, rheology), simulation (e.g., Monte Carlo, molecular dynamics, multi-scale/coarse-grained modeling), and theoretical methods. Renewable/sustainable polymers, polymer networks, responsive polymers, electro-, magneto- and opto-active macromolecules, inorganic polymers, charge-transporting polymers (ion-containing, semiconducting, and conducting), nanostructured polymers, and polymer composites are also of interest. Typical papers published in Macromolecules showcase important and innovative concepts, experimental methods/observations, and theoretical/computational approaches that demonstrate a fundamental advance in the understanding of polymers.
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