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Computationally efficient approach for the minimization of volume constrained vector-valued Ginzburg-Landau energy functional

机译:最小化体积约束的向量值Ginzburg-Landau能量泛函的计算有效方法

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The minimization of volume constrained vector-valued Ginzburg-Landau energy functional is considered in the present study. It has many applications in computational science and engineering, like the conservative phase separation in multiphase systems (such as the spinodal decomposition), phase coarsening in multiphase systems, color image segmentation and optimal space partitioning. A computationally efficient algorithm is presented to solve the space discretized form of the original optimization problem. The algorithm is based on the constrained nonmonotone L-2 gradient flow of Ginzburg-Landau functional followed by a regularization step, which is resulted from the Tikhonov regularization term added to the objective functional, that lifts the solution from the L-2 function space into H-1 space. The regularization step not only improves the convergence rate of the presented algorithm, but also increases its stability bound. The step-size selection based on the Barzilai-Borwein approach is adapted to improve the convergence rate of the introduced algorithm. The success and performance of the presented approach is demonstrated throughout several numerical experiments. To make it possible to reproduce the results presented in this work, the MATLAB implementation of the presented algorithm is provided as the supplementary material. (C) 2015 Elsevier Inc. All rights reserved.
机译:本研究中考虑了体积约束的向量值Ginzburg-Landau能量泛函的最小化。它在计算科学和工程中有许多应用,例如多相系统中的保守相分离(例如旋节线分解),多相系统中的相粗化,彩色图像分割和最佳空间划分。提出了一种计算有效的算法来解决原始优化问题的空间离散形式。该算法基于Ginzburg-Landau泛函的约束非单调L-2梯度流,然后进行正则化,这是将Tikhonov正则项添加到目标泛函后得出的,该解将解从L-2函数空间提升为H-1空间。正则化步骤不仅提高了算法的收敛速度,而且增加了算法的稳定性。基于Barzilai-Borwein方法的步长选择适用于提高引入算法的收敛速度。通过数个数值实验证明了所提出方法的成功和性能。为了能够重现该工作中提出的结果,提供了所提出算法的MATLAB实现作为补充材料。 (C)2015 Elsevier Inc.保留所有权利。

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