Efficient and accurate separable models for discrete material optimization: A continuous perspective
Multi-material design optimization problems can, after discretization, be solved by the iterative solution of simpler sub-problems which approximate the original problem at an expansion point to first order. In particular, models constructed from convex separable first order approximations have a lo...
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Zusammenfassung: | Multi-material design optimization problems can, after discretization, be
solved by the iterative solution of simpler sub-problems which approximate the
original problem at an expansion point to first order. In particular, models
constructed from convex separable first order approximations have a long and
successful tradition in the design optimization community and have led to
powerful optimization tools like the prominently used method of moving
asymptotes (MMA). In this paper, we introduce several new separable
approximations to a model problem and examine them in terms of accuracy and
fast evaluation. The models can, in general, be nonconvex and are based on the
Sherman-Morrison-Woodbury matrix identity on the one hand, and on the
mathematical concept of topological derivatives on the other hand. We show a
surprising relation between two models originating from these two -- at a first
sight -- very different concepts.
Numerical experiments show a high level of accuracy for two of our proposed
models while also their evaluation can be performed efficiently once enough
data has been precomputed in an offline phase. Additionally it is demonstrated
that suboptimal decisions can be avoided using our most accurate models. |
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DOI: | 10.48550/arxiv.2302.05144 |