An abstract Lagrangian framework for computing shape derivatives

In this paper we study an abstract framework for computing shape derivatives of functionals subject to PDE constraints in Banach spaces. We revisit the Lagrangian approach using the implicit function theorem in an abstract setting tailored for applications to shape optimization. This abstract framew...

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Bibliographic Details
Published inESAIM. Control, optimisation and calculus of variations Vol. 29; p. 5
Main Authors Laurain, Antoine, Lopes, Pedro T.P., Nakasato, Jean C.
Format Journal Article
LanguageEnglish
Published Les Ulis EDP Sciences 2023
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Summary:In this paper we study an abstract framework for computing shape derivatives of functionals subject to PDE constraints in Banach spaces. We revisit the Lagrangian approach using the implicit function theorem in an abstract setting tailored for applications to shape optimization. This abstract framework yields practical formulae to compute the derivative of a shape functional, the material derivative of the state, and the adjoint state. Furthermore, it allows to gain insight on the duality between the material derivative of the state and the adjoint state. We show several applications of this method to the computation of distributed shape derivatives for problems involving linear elliptic, nonlinear elliptic, parabolic PDEs and distributions. We also compare our approach with other techniques for computing shape derivatives including the material derivative method and the averaged adjoint method.
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ISSN:1292-8119
1262-3377
DOI:10.1051/cocv/2022078