Abstract

We analyze the finite element discretization of distributed elliptic optimal control problems with variable energy regularization, where the usual L2(ฮฉ) norm regularization term with a constant regularization parameter ฯฑ is replaced by a suitable representation of the energy norm in Hโˆ’1(ฮฉ) involving a variable, mesh-dependent regularization parameter ฯฑ(x). It turns out that the error between the computed finite element state uหœฯฑh and the desired state uโ€พ (target) is optimal in the L2(ฮฉ) norm provided that ฯฑ(x) behaves like the local mesh size squared. This is especially important when adaptive meshes are used in order to approximate discontinuous target functions. The adaptive scheme can be driven by the computable and localizable error norm โ€–uหœฯฑhโˆ’uโ€พโ€–L2(ฮฉ) between the finite element state uหœฯฑh and the target uโ€พ. The numerical results not only illustrate our theoretical findings, but also show that the iterative solvers for the discretized reduced optimality system are very efficient and robust.

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