Data-Driven Additive Manufacturing Constraints for Topology Optimization
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Weiss, Benjamin M.
Hamel, Joshua M.
Ganter, Mark A.
Storti, Duane W.
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Abstract
The topology optimization (TO) of structures to be produced using additive manufacturing
(AM) is explored using a data-driven constraint function on the minimum producible size of small
features in different shapes and orientations. This shape- and orientation-dependent manufacturing
constraint, derived from experimental data, is implemented within a TO framework using a
modified version of the Moving Morphable Components (MMC) approach. Because the analytic
constraint function is fully differentiable, gradient-based optimization can be used. The MMC
approach is extended in this work to include a “bootstrapping” step, which provides initial
component layouts to the MMC algorithm based on intermediate Solid Isotropic Material with
Penalization (SIMP) topology optimization results. This “bootstrapping” approach improves
convergence compared to reference MMC implementations. Results from two compliance design
optimization example problems demonstrate the successful integration of the manufacturability
constraint in the MMC approach, and the optimal designs produced show minor changes in
topology and shape compared to designs produced using fixed-radius filters in the traditional SIMP
approach. The use of this data-driven manufacturability constraint makes it possible to take better
advantage of the achievable complexity in additive manufacturing processes, while resulting in
typical penalties to the design objective function of around only 2% when compared to the
unconstrained case.
