Taylor Phillip A, Stevens Mark J
Sandia National Laboratories, Center for Integrated Nanotechnologies, Albuquerque, NM, 87123, USA.
Eur Phys J E Soft Matter. 2023 Oct 13;46(10):97. doi: 10.1140/epje/s10189-023-00355-x.
Strongly charged polyelectrolytes (PEs) demonstrate complex solution behavior as a function of chain length, concentrations, and ionic strength. The viscosity behavior is important to understand and is a core quantity for many applications, but aspects remain a challenge. Molecular dynamics simulations using implicit solvent coarse-grained (CG) models successfully reproduce structure, but are often inappropriate for calculating viscosities. To address the need for CG models which reproduce viscoelastic properties of one of the most studied PEs, sodium polystyrene sulfonate (NaPSS), we report our recent efforts in using Bayesian optimization to develop CG models of NaPSS which capture both polymer structure and dynamics in aqueous solutions with explicit solvent. We demonstrate that our explicit solvent CG NaPSS model with the ML-BOP water model [Chan et al. Nat Commun 10, 379 (2019)] quantitatively reproduces NaPSS chain statistics and solution structure. The new explicit solvent CG model is benchmarked against diffusivities from atomistic simulations and experimental specific viscosities for short chains. We also show that our Bayesian-optimized CG model is transferable to larger chain lengths across a range of concentrations. Overall, this work provides a machine-learned model to probe the structural, dynamic, and rheological properties of polyelectrolytes such as NaPSS and aids in the design of novel, strongly charged polymers with tunable structural and viscoelastic properties.
强电荷聚电解质(PEs)的溶液行为复杂,是链长、浓度和离子强度的函数。粘度行为对于理解至关重要,并且是许多应用的核心参数,但相关方面仍然具有挑战性。使用隐式溶剂粗粒化(CG)模型的分子动力学模拟成功再现了结构,但通常不适用于计算粘度。为了满足对能够再现研究最多的聚电解质之一聚苯乙烯磺酸钠(NaPSS)粘弹性特性的CG模型的需求,我们报告了我们最近利用贝叶斯优化开发NaPSS的CG模型的工作,该模型在显式溶剂的水溶液中捕捉聚合物结构和动力学。我们证明,我们具有ML-BOP水模型的显式溶剂CG NaPSS模型[Chan等人,《自然通讯》10,379(2019)]定量再现了NaPSS链统计和溶液结构。新的显式溶剂CG模型以原子模拟的扩散系数和短链的实验比粘度为基准。我们还表明,我们的贝叶斯优化CG模型可转移到一系列浓度下的更大链长。总体而言,这项工作提供了一个机器学习模型,用于探究聚电解质(如NaPSS)的结构、动力学和流变学特性,并有助于设计具有可调结构和粘弹性特性的新型强电荷聚合物。