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粘弹性材料连续弛豫时间和频谱的直接识别

Direct Identification of the Continuous Relaxation Time and Frequency Spectra of Viscoelastic Materials.

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

Materials (Basel). 2024 Oct 3;17(19):4870. doi: 10.3390/ma17194870.

Abstract

Relaxation time and frequency spectra are not directly available by measurement. To determine them, an ill-posed inverse problem must be solved based on relaxation stress or oscillatory shear relaxation data. Therefore, the quality of spectra models has only been assessed indirectly by examining the fit of the experiment data to the relaxation modulus or dynamic moduli models. As the measures of data fitting, the mean sum of the moduli square errors were usually used, the minimization of which was an essential step of the identification algorithms. The aim of this paper was to determine a relaxation spectrum model that best approximates the real unknown spectrum in a direct manner. It was assumed that discrete-time noise-corrupted measurements of a relaxation modulus obtained in the stress relaxation experiment are available for identification. A modified relaxation frequency spectrum was defined as a quotient of the real relaxation spectrum and relaxation frequency and expanded into a series of linearly independent exponential functions that are known to constitute a basis of the space of square-integrable functions. The spectrum model, given by a finite series of these basis functions, was assumed. An integral-square error between the real unknown modified spectrum and the spectrum model was taken as a measure of the model quality. This index was proved to be expressed in terms of the measurable relaxation modulus at uniquely defined sampling instants. Next, an empirical identification index was introduced in which the values of the real relaxation modulus are replaced by their noisy measurements. The identification consists of determining the spectrum model that minimizes this empirical index. Tikhonov regularization was applied to guarantee model smoothness and noise robustness. A simple analytical formula was derived to calculate the optimal model parameters and expressed in terms of the singular value decomposition. A complete identification algorithm was developed. The analysis of the model smoothness and model accuracy for noisy measurements was carried out. The equivalence of the direct identification of the relaxation frequency and time spectra has been demonstrated when the time spectrum is modeled by a series of functions given by the product of the relaxation frequency and its exponential function. The direct identification concept can be applied to both viscoelastic fluids and solids; however, some limitations to its applicability have been pointed out. Numerical studies have shown that the proposed identification algorithm can be successfully used to identify Gaussian-like and Kohlrausch-Williams-Watt relaxation spectra. The applicability of this approach to determining other commonly used classes of relaxation spectra was also examined.

摘要

弛豫时间和频率谱不能通过测量直接获得。为了确定它们,必须基于弛豫应力或振荡剪切弛豫数据来解决一个不适定的反问题。因此,谱模型的质量仅通过检查实验数据与弛豫模量或动态模量模型的拟合情况来间接评估。作为数据拟合的度量,通常使用模量平方误差的均值和,其最小化是识别算法的一个基本步骤。本文的目的是以直接的方式确定一个最接近真实未知谱的弛豫谱模型。假设在应力松弛实验中获得的弛豫模量的离散时间噪声污染测量值可用于识别。将修正的弛豫频率谱定义为真实弛豫谱与弛豫频率的商,并展开为一系列已知构成平方可积函数空间基的线性独立指数函数。假设谱模型由这些基函数的有限级数给出。将真实未知修正谱与谱模型之间的积分平方误差作为模型质量的度量。证明该指标可以在唯一确定的采样时刻根据可测量的弛豫模量来表示。接下来,引入一个经验识别指标,其中真实弛豫模量的值被其噪声测量值所取代。识别包括确定使该经验指标最小化的谱模型。应用蒂霍诺夫正则化来保证模型的平滑性和抗噪声性。推导了一个简单的解析公式来计算最优模型参数,并以奇异值分解的形式表示。开发了一个完整的识别算法。对噪声测量的模型平滑性和模型准确性进行了分析。当时间谱由弛豫频率与其指数函数的乘积给出的一系列函数建模时,证明了弛豫频率和时间谱直接识别的等价性。直接识别概念可应用于粘弹性流体和固体;然而,也指出了其适用性的一些局限性。数值研究表明,所提出的识别算法可成功用于识别类高斯和科尔劳施 - 威廉姆斯 - 瓦特弛豫谱。还研究了该方法在确定其他常用弛豫谱类别的适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9db6/11478369/6bb2b6cf09e2/materials-17-04870-g001.jpg

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