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http://dx.doi.org/10.5139/IJASS.2010.11.4.247

Multi-Objective Design Exploration and its Applications  

Obayashi, Shigeru (Institute of Fluid Science, Tohoku University)
Jeong, Shin-Kyu (Institute of Fluid Science, Tohoku University)
Shimoyama, Koji (Institute of Fluid Science, Tohoku University)
Chiba, Kazuhisa (Department of Mechanical Systems Engineering, Hokkaido Institute of Technology)
Morino, Hiroyuki (Mitsubishi Aircraft Corporation)
Publication Information
International Journal of Aeronautical and Space Sciences / v.11, no.4, 2010 , pp. 247-265 More about this Journal
Abstract
Multi-objective design exploration (MODE) and its applications are reviewed as an attempt to utilize numerical simulation in aerospace engineering design. MODE reveals the structure of the design space based on trade-off information. A self-organizing map (SOM) is incorporated into MODE as a visual data mining tool for the design space. SOM divides the design space into clusters with specific design features. This article reviews existing visual data mining techniques applied to engineering problems. Then, we discuss three applications of MODE: multidisciplinary design optimization for a regional-jet wing, silent supersonic technology demonstrator and centrifugal diffusers.
Keywords
Multidisciplinary design optimization; Evolutionary computation; Multiobjective optimization; Data mining; Self-organizaing map; Response surface method;
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