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An adaptive, data-driven multiscale approach for dense granular flows

An adaptive, data-driven multiscale approach for dense granular flows

来源:Arxiv_logoArxiv
英文摘要

The accuracy of coarse-grained continuum models of dense granular flows is limited by the lack of high-fidelity closure models for granular rheology. One approach to addressing this issue, referred to as the hierarchical multiscale method, is to use a high-fidelity fine-grained model to compute the closure terms needed by the coarse-grained model. The difficulty with this approach is that the overall model can become computationally intractable due to the high computational cost of the high-fidelity model. In this work, we describe a multiscale modeling approach for dense granular flows that utilizes neural networks trained using high-fidelity discrete element method (DEM) simulations to approximate the constitutive granular rheology for a continuum incompressible flow model. Our approach leverages an ensemble of neural networks to estimate predictive uncertainty that allows us to determine whether the rheology at a given point is accurately represented by the neural network model. Additional DEM simulations are only performed when needed, minimizing the number of additional DEM simulations required when updating the rheology. This adaptive coupling significantly reduces the overall computational cost of the approach while controlling the error. In addition, the neural networks are customized to learn regularized rheological behavior to ensure well-posedness of the continuum solution. We first validate the approach using two-dimensional steady-state and decelerating inclined flows. We then demonstrate the efficiency of our approach by modeling three-dimensional sub-aerial granular column collapse for varying initial column aspect ratios, where our multiscale method compares well with the computationally expensive computational fluid dynamics (CFD)-DEM simulation.

B. Siddani、Weiqun Zhang、Andrew Nonaka、John Bell、Ishan Srivastava

力学自然科学研究方法信息科学、信息技术

B. Siddani,Weiqun Zhang,Andrew Nonaka,John Bell,Ishan Srivastava.An adaptive, data-driven multiscale approach for dense granular flows[EB/OL].(2025-04-30)[2025-07-16].https://arxiv.org/abs/2505.13458.点此复制

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