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PARAOPT: A Parareal Algorithm for Optimality Systems

Martin J. Gander, Félix Kwok, Julien Salomon

2020SIAM Journal on Scientific Computing28 citationsDOIOpen Access PDF

Abstract

The time parallel solution of optimality systems arising in PDE constrained optimization could be achieved by simply applying any time parallel algorithm, such as Parareal, to solve the forward and backward evolution problems arising in the optimization loop. We propose here a different strategy by devising directly a new time parallel algorithm, which we call ParaOpt, for the coupled forward and backward nonlinear partial differential equations. ParaOpt is inspired by the Parareal algorithm for evolution equations and thus is automatically a two-level method. We provide a detailed convergence analysis for the case of linear parabolic PDE constraints. We illustrate the performance of ParaOpt with numerical experiments for both linear and nonlinear optimality systems.

Topics & Concepts

MathematicsConvergence (economics)Nonlinear systemPartial differential equationMathematical optimizationAlgorithmMathematical analysisEconomic growthPhysicsQuantum mechanicsEconomicsAdvanced Optimization Algorithms ResearchNumerical methods for differential equationsOptimization and Variational Analysis
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