TY - JOUR
T1 - Study on structural optimum design based on qualitative sensitivities
AU - Arakawa, Masao
AU - Yamakawa, Hiroshi
PY - 1993/2
Y1 - 1993/2
N2 - An optimum design method is considered as a method whose results are the most reasonable from various standpoints in the prescribed mathematical formulation. However, its formulations present difficulties in choosing objective functions, setting allowances to constraints and so on, because they are greatly concerned with the results of optimization. In this study, we proposed concepts of qualitative sensitivities and qualitative optimality compared to quantitative concepts, and proposed a general algorithm of the qualitative optimization method. We newly defined three kinds of fuzzy language and assigned fuzzy sets to each of them and assigned them to each candidate of discrete design variable. We propose fuzzy reasoning rules by using these two kinds of fuzzy sets. We also extend the proposed algorithm to multiobjective optimization. Through the numerical example of a single objective problem, we obtained almost the same solution as in quantitative methods, and efficiencies were confirmed for this case. Also through the example to multiobjective problem, the new method was shown to have more flexibility in deciding the preferred objective functions compared to the conventional method.
AB - An optimum design method is considered as a method whose results are the most reasonable from various standpoints in the prescribed mathematical formulation. However, its formulations present difficulties in choosing objective functions, setting allowances to constraints and so on, because they are greatly concerned with the results of optimization. In this study, we proposed concepts of qualitative sensitivities and qualitative optimality compared to quantitative concepts, and proposed a general algorithm of the qualitative optimization method. We newly defined three kinds of fuzzy language and assigned fuzzy sets to each of them and assigned them to each candidate of discrete design variable. We propose fuzzy reasoning rules by using these two kinds of fuzzy sets. We also extend the proposed algorithm to multiobjective optimization. Through the numerical example of a single objective problem, we obtained almost the same solution as in quantitative methods, and efficiencies were confirmed for this case. Also through the example to multiobjective problem, the new method was shown to have more flexibility in deciding the preferred objective functions compared to the conventional method.
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M3 - Article
AN - SCOPUS:0027541601
SN - 0387-5024
VL - 59
SP - 114
EP - 121
JO - Nippon Kikai Gakkai Ronbunshu, C Hen/Transactions of the Japan Society of Mechanical Engineers, Part C
JF - Nippon Kikai Gakkai Ronbunshu, C Hen/Transactions of the Japan Society of Mechanical Engineers, Part C
IS - 558
ER -