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首页> 外文期刊>Journal of Computational Physics >A variational level set methodology without reinitialization for the prediction of equilibrium interfaces over arbitrary solid surfaces
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A variational level set methodology without reinitialization for the prediction of equilibrium interfaces over arbitrary solid surfaces

机译:变形水平设置方法,而无需重新初始化,用于预测任意固体表面上的平衡界面

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摘要

A robust numerical methodology to predict equilibrium interfaces over arbitrary solid surfaces is developed. The kernel of the proposed method is the distance regularized level set equations (DRLSE) with techniques to incorporate the no-penetration and volume-conservation constraints. In this framework, we avoid reinitialization that is typically used in traditional level set methods. This allows for a more efficient algorithm since only one advection equation is solved, and avoids numerical error associated with the re-distancing step. A novel surface tension distribution, based on harmonic mean, is prescribed such that the zero level set has the correct liquid-solid surface tension value. This leads to a more accurate prediction of the triple contact point location. The method uses second-order central difference schemes which facilitates easy parallel implementation, and is validated by comparing to traditional level set methods for canonical problems. The application of the method in the context of Gibbs free energy minimization, to obtain liquid-air interfaces is validated against existing analytical solutions. The capability of the methodology to predict equilibrium shapes over both structured and realistic rough surfaces is demonstrated. (C) 2019 Elsevier Inc. All rights reserved.
机译:开发了一种稳健的数值方法,以预测任意固体表面上的平衡界面。所提出的方法的内核是距离正规化水平设定方程(DRLSE),其具有包含无渗透和音量保护约束的技术。在此框架中,我们避免了重新初始化,通常用于传统级别设置方法。这允许更有效的算法,因为只有一个平流方程被解决,并且避免与重新延伸步骤相关联的数值误差。规定了基于谐波平均值的新型表面张力分布,使得零水平设定具有正确的液体固体表面张力值。这导致更准确地预测三重接触点位置。该方法采用二阶中心差方案,促进了易于并行实现,并通过比较传统级别设置方法来验证用于规范问题。该方法在GIBBS自由能量最小化的背景下的应用,以获得液体空气界面是针对现有分析解决方案的验证。证明了方法来预测结构化和现实粗糙表面的平衡形状的能力。 (c)2019 Elsevier Inc.保留所有权利。

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