4.7 Article

Optimizing compressive load capacity for differing tensegrity geometries

Journal

COMPUTERS & STRUCTURES
Volume 249, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compstruc.2021.106523

Keywords

Tensegrity; Genetic algorithm; Optimization; Compressive load; Aspect ratio

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Tensegrity structures offer new possibilities in structural engineering by efficiently distributing compressive loads through optimized prestressing. Over-tensioning can reduce overall resistance to compressive loading, while genetic algorithms can be used to optimize pretension loads for increased load capacity.
Tensegrity structures present new possibilities to the field of structural engineering, owing to their ability to efficiently distribute compressive loads associated with their non-orthogonal design. Previous research has shown that when pretensioned, tensegrities exhibit higher resistance to compressive loading. However, over-tensioning can have adverse effects, reducing the tensegrities overall resistance to compressive loading. The geometry of a tensegrity affects how the structure reacts to loading, and the prestress and loading can concurrently affect geometry. This paper uses genetic algorithms to optimize the pretension loads in the cables of a tensegrity to deliver the highest overall vertical load capacity. The results are applied to determine the ultimate load-carrying capacity of tensegrities under a compressive load and determine the optimal aspect ratio at which this is achieved. By optimizing the pretension, the tensegrity can withstand compressive loads up to six times those that have been previously reported in literature. (C) 2021 Elsevier Ltd. All rights reserved.

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