Artigo Revisado por pares

Design window search using continuous evolutionary algorithm and clustering––its application to shape design of microelectrostatic actuator

2002; Elsevier BV; Volume: 80; Issue: 31 Linguagem: Inglês

10.1016/s0045-7949(02)00293-6

ISSN

1879-2243

Autores

Daisuke Ishihara, Min Joong Jeong, Shinobu Yoshimura, Genki YAGAWA,

Tópico(s)

Building Energy and Comfort Optimization

Resumo

This paper describes a search method for multi-dimensional design window (DW), which is defined as an existing area of satisfactory solutions in a design parameter space. The method consists of the following two steps: (1) direct search for satisfactory design solutions using a continuous evolutionary algorithm (CEA) from a wide area of the design parameter space in a robust manner, and (2) identification of a precise structure of DW by clustering the detected satisfactory solutions with a modified K-means algorithm. The CEA is a kind of genetic algorithms modified to deal with continuous variables. The modified K-means clustering algorithm contains an explicit procedure to determine the optimum number of clusters. The proposed DW search method was implemented to an integrated computational aided engineering system for multi-disciplinary structural design developed by the authors, and then the method was applied to shape design of a microelectrostatic actuator for next generation high-density optical memory. A DW consisting of four clusters, i.e. four sub-DWs was obtained, and the features of the representative design solutions of the four sub-DWs were compared with each other in detail, and a final design solution was determined.

Referência(s)
Altmetric
PlumX