An End-to-End Deep Learning Method for Solving Nonlocal Allen-Cahn and Cahn-Hilliard Phase-Field Models
Yuwei Geng, Olena Burkovska, Lili Ju, Guannan Zhang, Max Gunzburger

TL;DR
This paper introduces a deep learning approach to efficiently solve nonlocal Allen-Cahn and Cahn-Hilliard phase-field models, capturing sharp interfaces and reducing computational costs compared to traditional discretization methods.
Contribution
The work presents a novel neural network framework incorporating nonlocal kernels for solving complex phase-field models with sharp interfaces, improving accuracy and efficiency.
Findings
Accurate approximation of nonlocal phase-field models
Preservation of model structure and properties
Significant reduction in computational cost
Abstract
We propose an efficient end-to-end deep learning method for solving nonlocal Allen-Cahn (AC) and Cahn-Hilliard (CH) phase-field models. One motivation for this effort emanates from the fact that discretized partial differential equation-based AC or CH phase-field models result in diffuse interfaces between phases, with the only recourse for remediation is to severely refine the spatial grids in the vicinity of the true moving sharp interface whose width is determined by a grid-independent parameter that is substantially larger than the local grid size. In this work, we introduce non-mass conserving nonlocal AC or CH phase-field models with regular, logarithmic, or obstacle double-well potentials. Because of non-locality, some of these models feature totally sharp interfaces separating phases. The discretization of such models can lead to a transition between phases whose width is only a…
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Taxonomy
TopicsSolidification and crystal growth phenomena · Advanced Mathematical Modeling in Engineering
