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从应力松弛测试测量中稳健恢复最优平滑聚合物松弛谱

Robust Recovery of Optimally Smoothed Polymer Relaxation Spectrum from Stress Relaxation Test Measurements.

作者信息

Stankiewicz Anna

机构信息

Department of Technology Fundamentals, Faculty of Production Engineering, University of Life Sciences in Lublin, 20-612 Lublin, Poland.

出版信息

Polymers (Basel). 2024 Aug 14;16(16):2300. doi: 10.3390/polym16162300.

Abstract

The relaxation spectrum is a fundamental viscoelastic characteristic from which other material functions used to describe the rheological properties of polymers can be determined. The spectrum is recovered from relaxation stress or oscillatory shear data. Since the problem of the relaxation spectrum identification is ill-posed, in the known methods, different mechanisms are built-in to obtain a smooth enough and noise-robust relaxation spectrum model. The regularization of the original problem and/or limit of the set of admissible solutions are the most commonly used remedies. Here, the problem of determining an optimally smoothed continuous relaxation time spectrum is directly stated and solved for the first time, assuming that discrete-time noise-corrupted measurements of a relaxation modulus obtained in the stress relaxation experiment are available for identification. The relaxation time spectrum model that reproduces the relaxation modulus measurements and is the best smoothed in the class of continuous square-integrable functions is sought. Based on the Hilbert projection theorem, the best-smoothed relaxation spectrum model is found to be described by a finite sum of specific exponential-hyperbolic basis functions. For noise-corrupted measurements, a quadratic with respect to the Lagrange multipliers term is introduced into the Lagrangian functional of the model's best smoothing problem. As a result, a small model error of the relaxation modulus model is obtained, which increases the model's robustness. The necessary and sufficient optimality conditions are derived whose unique solution yields a direct analytical formula of the best-smoothed relaxation spectrum model. The related model of the relaxation modulus is given. A computational identification algorithm using the singular value decomposition is presented, which can be easily implemented in any computing environment. The approximation error, model smoothness, noise robustness, and identifiability of the polymer real spectrum are studied analytically. It is demonstrated by numerical studies that the algorithm proposed can be successfully applied for the identification of one- and two-mode Gaussian-like relaxation spectra. The applicability of this approach to determining the Baumgaertel, Schausberger, and Winter spectrum is also examined, and it is shown that it is well approximated for higher frequencies and, in particular, in the neighborhood of the local maximum. However, the comparison of the asymptotic properties of the best-smoothed spectrum model and the BSW model a priori excludes a good approximation of the spectrum in the close neighborhood of zero-relaxation time.

摘要

松弛谱是一种基本的粘弹性特征,从中可以确定用于描述聚合物流变特性的其他材料函数。该谱可从松弛应力或振荡剪切数据中恢复。由于松弛谱识别问题是不适定的,在已知方法中,内置了不同的机制以获得足够平滑且抗噪声的松弛谱模型。对原始问题进行正则化和/或限制可允许解的集合是最常用的补救措施。在此,首次直接陈述并解决了确定最优平滑连续松弛时间谱的问题,假设在应力松弛实验中获得的离散时间噪声污染的松弛模量测量值可用于识别。寻求在连续平方可积函数类中再现松弛模量测量值且是最佳平滑的松弛时间谱模型。基于希尔伯特投影定理,发现最佳平滑松弛谱模型由特定指数 - 双曲基函数的有限和描述。对于噪声污染的测量值,在模型最佳平滑问题的拉格朗日泛函中引入了关于拉格朗日乘子项的二次项。结果,获得了松弛模量模型的小模型误差,这增加了模型的鲁棒性。推导了必要且充分的最优性条件,其唯一解给出了最佳平滑松弛谱模型的直接解析公式。给出了相关的松弛模量模型。提出了一种使用奇异值分解的计算识别算法,该算法可在任何计算环境中轻松实现。对聚合物真实谱的近似误差、模型平滑性、噪声鲁棒性和可识别性进行了分析研究。数值研究表明,所提出的算法可成功应用于单模和双模类高斯松弛谱的识别。还研究了该方法在确定鲍姆加特尔、绍斯贝格和温特谱方面的适用性,结果表明在较高频率下,特别是在局部最大值附近,它能得到很好的近似。然而,最佳平滑谱模型和BSW模型的渐近性质比较先验地排除了在零松弛时间附近邻域对谱的良好近似。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f5cf/11359835/488dd8fdb7ae/polymers-16-02300-g001.jpg

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