Fractional rheology-informed neural networks for data-driven identification of viscoelastic constitutive models

IF 2.3 3区 工程技术 Q2 MECHANICS
Donya Dabiri, Milad Saadat, Deepak Mangal, Safa Jamali
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引用次数: 3

Abstract

Developing constitutive models that can describe a complex fluid’s response to an applied stimulus has been one of the critical pursuits of rheologists. The complexity of the models typically goes hand-in-hand with that of the observed behaviors and can quickly become prohibitive depending on the choice of materials and/or flow protocols. Therefore, reducing the number of fitting parameters by seeking compact representations of those constitutive models can obviate extra experimentation to confine the parameter space. To this end, fractional derivatives in which the differential response of matter accepts non-integer orders have shown promise. Here, we develop neural networks that are informed by a series of different fractional constitutive models. These fractional rheology-informed neural networks (RhINNs) are then used to recover the relevant parameters (fractional derivative orders) of three fractional viscoelastic constitutive models, i.e., fractional Maxwell, Kelvin-Voigt, and Zener models. We find that for all three studied models, RhINNs recover the observed behavior accurately, although in some cases, the fractional derivative order is recovered with significant deviations from what is known as ground truth. This suggests that extra fractional elements are redundant when the material response is relatively simple. Therefore, choosing a fractional constitutive model for a given material response is contingent upon the response complexity, as fractional elements embody a wide range of transient material behaviors.

Abstract Image

基于分数流变学的神经网络用于粘弹性本构模型的数据驱动识别
开发能够描述复杂流体对施加刺激的反应的本构模型一直是流变学家的关键追求之一。模型的复杂性通常与观察到的行为密切相关,并且可以根据材料和/或流动协议的选择迅速变得令人望而却步。因此,通过寻找这些本构模型的紧凑表示来减少拟合参数的数量可以避免额外的实验来限制参数空间。为此目的,物质的微分响应接受非整数阶的分数阶导数显示出了希望。在这里,我们开发了由一系列不同的分数本构模型通知的神经网络。然后使用这些分数阶流变信息神经网络(rhinn)来恢复三种分数阶黏弹性本构模型的相关参数(分数阶导数阶数),即分数阶Maxwell、Kelvin-Voigt和Zener模型。我们发现,对于所研究的所有三种模型,rhinn都能准确地恢复观察到的行为,尽管在某些情况下,分数阶导数的恢复与所谓的基础真理有显著偏差。这表明,当材料响应相对简单时,额外的分数元素是多余的。因此,为给定的材料响应选择分数本构模型取决于响应的复杂性,因为分数单元体现了广泛的瞬态材料行为。
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来源期刊
Rheologica Acta
Rheologica Acta 物理-力学
CiteScore
4.60
自引率
8.70%
发文量
55
审稿时长
3 months
期刊介绍: "Rheologica Acta is the official journal of The European Society of Rheology. The aim of the journal is to advance the science of rheology, by publishing high quality peer reviewed articles, invited reviews and peer reviewed short communications. The Scope of Rheologica Acta includes: - Advances in rheometrical and rheo-physical techniques, rheo-optics, microrheology - Rheology of soft matter systems, including polymer melts and solutions, colloidal dispersions, cement, ceramics, glasses, gels, emulsions, surfactant systems, liquid crystals, biomaterials and food. - Rheology of Solids, chemo-rheology - Electro and magnetorheology - Theory of rheology - Non-Newtonian fluid mechanics, complex fluids in microfluidic devices and flow instabilities - Interfacial rheology Rheologica Acta aims to publish papers which represent a substantial advance in the field, mere data reports or incremental work will not be considered. Priority will be given to papers that are methodological in nature and are beneficial to a wide range of material classes. It should also be noted that the list of topics given above is meant to be representative, not exhaustive. The editors welcome feedback on the journal and suggestions for reviews and comments."
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