通过多保真度神经网络建立数据驱动的非线性流变学构成元模型

Milad Saadat, W. Hartt V, Norman J. Wagner, Safa Jamali
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引用次数: 0

摘要

预测复杂流体在不同流动条件下的反应一直是流变学的重点,通常通过构成关系来实现。然而,在有些情况下,人们对材料的数学知识知之甚少,而从样品中收集数据却十分困难,或需要耗费大量资源,或两者兼而有之。在这种情况下,使用一种名为多保真度神经网络(MFNN)的参数代用模型对可观测数据进行元建模,可以通过利用从实验(或高分辨率模拟)中收集到的少量高保真(Hi-Fi)数据和合成生成的大量低保真(Lo-Fi)数据来弥补高保真数据的不足,从而省去构造方程的开发步骤。为此,我们采用 MFNN 对热-粘弹性(TVE)流体(消费品强生婴儿洗发水)在四种流动协议下的材料响应进行元建模:稳定剪切、阶跃增长、振荡和小/大振幅振荡剪切(S/LAOS)。此外,还探讨了材料响应的时间-温度叠加(TTS)和 MFNN 预测。通过对对数间隔 Hii-Fi 数据应用简单的线性回归(不归纳任何构成方程),生成了一系列 Lo-Fi 数据,并发现这些数据足以通过内插法或外推法获得除 S/LAOS 以外所有流动协议的准确材料响应恢复。为解决这一不足,MFNN 平台采用了线性构造模型(麦克斯韦粘弹性模型),从而在 S/LAOS 材料响应恢复中同时实现了内插和外推功能。详细讨论了数据量、流动类型和变形范围的作用,为不同复杂流体的多保真元建模提供了实用途径。
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 meta-modeling of nonlinear rheology via multifidelity neural networks
Predicting the response of complex fluids to different flow conditions has been the focal point of rheology and is generally done via constitutive relations. There are, nonetheless, scenarios in which not much is known from the material mathematically, while data collection from samples is elusive, resource-intensive, or both. In such cases, meta-modeling of observables using a parametric surrogate model called multi-fidelity neural networks (MFNNs) may obviate the constitutive equation development step by leveraging only a handful of high-fidelity (Hi-Fi) data collected from experiments (or high-resolution simulations) and an abundance of low-fidelity (Lo-Fi) data generated synthetically to compensate for Hi-Fi data scarcity. To this end, MFNNs are employed to meta-model the material responses of a thermo-viscoelastic (TVE) fluid, consumer product Johnson’s® Baby Shampoo, under four flow protocols: steady shear, step growth, oscillatory, and small/large amplitude oscillatory shear (S/LAOS). In addition, the time–temperature superposition (TTS) of the material response and MFNN predictions are explored. By applying simple linear regression (without induction of any constitutive equation) on log-spaced Hi-Fi data, a series of Lo-Fi data were generated and found sufficient to obtain accurate material response recovery in terms of either interpolation or extrapolation for all flow protocols except for S/LAOS. This insufficiency is resolved by informing the MFNN platform with a linear constitutive model (Maxwell viscoelastic) resulting in simultaneous interpolation and extrapolation capabilities in S/LAOS material response recovery. The roles of data volume, flow type, and deformation range are discussed in detail, providing a practical pathway to multifidelity meta-modeling of different complex fluids.
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