Sergiy Zhuk, Jason Frank, et al.
SIAM Journal on Scientific Computing
This paper introduces a new computational methodology for determining a-posteriori multi-objective error estimates for finite-element approximations, and for constructing corresponding (quasi-)optimal adaptive refinements of finite-element spaces. As opposed to the classical goal-oriented approaches, which consider only a single objective functional, the presented methodology applies to general closed convex subsets of the dual space and constructs a worst-case error estimate of the finite-element approximation error. This worst-case multi-objective error estimate conforms to a dual-weighted residual, in which the dual solution is associated with an approximate supporting functional of the objective set at the approximation error. We regard both standard approximation errors and data-incompatibility errors associated with incompatibility of boundary data with the trace of the finite-element space. Numerical experiments are presented to demonstrate the efficacy of applying the proposed worst-case multi-objective error estimate in adaptive refinement procedures.
Sergiy Zhuk, Jason Frank, et al.
SIAM Journal on Scientific Computing
Ronan A. Cahill, Donal F. O'Shea, et al.
The British Journal of Surgery
Emanuele Ragnoli, Sergiy Zhuk, et al.
CDC 2015
Sergiy Zhuk, Olexander Nakonechnyi
Minimax Theory and its Applications