Adaptive multilevel trust-region methods for time-dependent PDE-constrained optimization

IF 0.5 4区 数学 Q3 MATHEMATICS Portugaliae Mathematica Pub Date : 2017-05-03 DOI:10.4171/PM/1992
S. Ulbrich, J. Ziems
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引用次数: 4

Abstract

We present a class of adaptive multilevel trust-region methods for the efficient solution of optimization problems governed by time–dependent nonlinear partial differential equations with control constraints. The algorithm is based on the ideas of the adaptive multilevel inexact SQP-method from [26, 27]. It is in particular well suited for problems with time–dependent PDE constraints. Instead of the quasi-normal step in a classical SQP method which results in solving the linearized PDE sufficiently well, in this algorithm a (nonlinear) solver is applied to the current discretization of the PDE. Moreover, different discretizations and solvers for the PDE and the adjoint PDE may be applied. The resulting inexactness of the reduced gradient in the current discretization is controlled within the algorithm. Thus, highly efficient PDE solvers can be coupled with the proposed optimization framework. The algorithm starts with a coarse discretization of the underlying optimization problem and provides during the optimization process implementable criteria for an adaptive refinement strategy of the current discretization based on error estimators. We prove global convergence to a stationary point of the infinitedimensional problem. Moreover, we illustrate how the adaptive refinement strategy of the algorithm can be implemented by using a posteriori error estimators for the state and the adjoint equation. Numerical results for a semilinear parabolic PDE–constrained problem with pointwise control constraints are presented. Mathematics Subject Classification (2010). 90C55 49M05 49M25 49M37
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含时PDE约束优化的自适应多级信赖域方法
我们提出了一类自适应多级信赖域方法,用于求解具有控制约束的时变非线性偏微分方程的优化问题。该算法基于[26,27]中自适应多级不精确SQP方法的思想。它特别适用于具有时间相关PDE约束的问题。在该算法中,将(非线性)求解器应用于PDE的当前离散化,而不是经典SQP方法中的准正规步骤,该方法可以很好地求解线性化的PDE。此外,可以应用不同的PDE和伴随PDE的离散化和求解器。在算法内控制当前离散化中减小的梯度的结果不精确性。因此,高效的PDE求解器可以与所提出的优化框架相结合。该算法从底层优化问题的粗略离散化开始,并在优化过程中为基于误差估计器的当前离散化的自适应细化策略提供可实现的标准。我们证明了无穷维问题的一个驻点的全局收敛性。此外,我们还说明了如何通过使用状态和伴随方程的后验误差估计来实现算法的自适应细化策略。给出了一类具有逐点控制约束的半线性抛物型偏微分方程约束问题的数值结果。《数学学科分类》(2010)。90C55 49M05 49M25 49M37
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来源期刊
Portugaliae Mathematica
Portugaliae Mathematica MATHEMATICS, APPLIED-MATHEMATICS
CiteScore
0.90
自引率
12.50%
发文量
23
审稿时长
>12 weeks
期刊介绍: Since its foundation in 1937, Portugaliae Mathematica has aimed at publishing high-level research articles in all branches of mathematics. With great efforts by its founders, the journal was able to publish articles by some of the best mathematicians of the time. In 2001 a New Series of Portugaliae Mathematica was started, reaffirming the purpose of maintaining a high-level research journal in mathematics with a wide range scope.
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