基于递归神经网络的复杂流体数据驱动本构模型

IF 2.3 3区 工程技术 Q2 MECHANICS
Howon Jin, Sangwoong Yoon, Frank C. Park, Kyung Hyun Ahn
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引用次数: 1

摘要

本研究引入了本构神经网络(ConNN)模型,这是一种机器学习算法,可以准确预测复杂流体在特定变形下的时间响应。ConNN模型利用递归神经网络架构来捕获随时间变化的应力响应,并且递归单元专门设计用于反映复杂流体的特性(消退记忆、有限弹性变形和松弛谱),而无需假设流体的任何运动方程。我们证明了ConNN模型可以有效地复制Giesekus模型和触变弹性粘塑性(TEVP)流体模型在不同剪切速率下产生的时间数据。为了测试训练模型的性能,我们将其置于一个振荡剪切流中,在流动方向上有周期性的反转,这是没有训练的。该模型成功地复制了原始模型的剪切模量,并且循环参数的训练值与原始模型的物理预测相匹配。然而,我们确实观察到法向应力有轻微的偏差,这表明需要进一步改进以实现更严格的物理对称性和改进模型预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Data-driven constitutive model of complex fluids using recurrent neural networks

Data-driven constitutive model of complex fluids using recurrent neural networks

This study introduces the Constitutive Neural Network (ConNN) model, a machine learning algorithm that accurately predicts the temporal response of complex fluids under specific deformations. The ConNN model utilizes a recurrent neural network architecture to capture the time dependent stress responses, and the recurrent units are specifically designed to reflect the characteristics of complex fluids (fading memory, finite elastic deformation, and relaxation spectrum), without presuming any equation of motion of the fluid. We demonstrate that the ConNN model can effectively replicate the temporal data generated by the Giesekus model and the Thixotropic-Elasto-Visco-Plastic (TEVP) fluid model under varying shear rates. To test the performance of the trained model, we subject it to an oscillatory shear flow, with periodic reversals in flow direction, which has not been trained on. The ConNN model successfully replicates the shear moduli of the original models, and the trained values of the recurrent parameters match the physical prediction of the original models. However, we do observe a slight deviation in the normal stresses, indicating that further improvements are necessary to achieve more rigorous physical symmetry and improve the model prediction.

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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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