Enforcing Mesh Quality Constraints in Shape Optimization with a Gradient Projection Method
Sebastian Blauth, Christian Leith\"auser

TL;DR
This paper introduces a gradient projection method to enforce minimum mesh quality constraints during shape optimization, ensuring mesh integrity in complex geometries without frequent remeshing.
Contribution
It presents a novel semi-discrete approach based on Rosen's gradient projection method to maintain mesh quality constraints during shape optimization.
Findings
Successfully applied to 2D and 3D problems
Guarantees minimum mesh quality throughout optimization
Effective in industrial and academic scenarios
Abstract
For the numerical solution of shape optimization problems, particularly those constrained by partial differential equations (PDEs), the quality of the underlying mesh is of utmost importance. Particularly when investigating complex geometries, the mesh quality tends to deteriorate over the course of a shape optimization so that either the optimization comes to a halt or an expensive remeshing operation must be performed before the optimization can be continued. In this paper, we present a novel, semi-discrete approach for enforcing a minimum mesh quality in shape optimization. Our approach is based on Rosen's gradient projection method, which incorporates mesh quality constraints into the shape optimization problem. The proposed constraints bound the angles of triangular and solid angles of tetrahedral mesh cells and, thus, also bound the quality of these mesh cells. The method treats…
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