A genetic algorithm for combined topology and shape optimisations
β Scribed by F. Cappello; A. Mancuso
- Publisher
- Elsevier Science
- Year
- 2003
- Tongue
- English
- Weight
- 397 KB
- Volume
- 35
- Category
- Article
- ISSN
- 0010-4485
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β¦ Synopsis
A method to find optimal topology and shape of structures is presented. With the first the optimal distribution of an assigned mass is found using an approach based on homogenisation theory, that seeks in which elements of a meshed domain it is present mass; with the second the discontinuous boundaries are smoothed. The problem of the optimal topology search has an ON/OFF nature and has suggested the employment of genetic algorithms. Thus in this paper a genetic algorithm has been developed, which uses as design variables, in the topology optimisation, the relative densities (with respect to effective material density) 0 or 1 of each element of the structure and, in the shape one, the coordinates of the keypoints of changeable boundaries constituted by curves. In both the steps the aim is that to find the variable sets producing the maximum stiffness of the structure, respecting an upper limit on the employed mass. The structural evaluations are carried out with a FEM commercial code, linked to the algorithm. Some applications have been performed and results compared with solutions reported in literature.
π SIMILAR VOLUMES
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## Abstract Lifeline systems, such as water distribution and gas supply networks, usually cover large areas. For these systems, seismic design is always a difficult problem because of the complexity of largeβscale networks. In this paper, a topology optimization technology for lifeline networks is