A Study on the Comparison of Approximation Models for Multi-Objective Design Optimization of a Tire

타이어 다목적 최적설계를 위한 근사모델 생성에 관한 연구

  • 송병철 (넥센타이어 연구개발본부) ;
  • 김성래 (넥센타이어 연구개발본부) ;
  • 강용구 (넥센타이어 연구개발본부) ;
  • 한민현 (넥센타이어 연구개발본부)
  • Received : 2011.08.10
  • Accepted : 2011.10.06
  • Published : 2011.10.31

Abstract

Tire's performance plays important roles in improving vehicle's performances. Tire makers carry out a lot of research to improve tire's performance. They are making effort to meet multi purposes using various optimization methods. Recently, the tire makers perform the shape optimization using approximation models, which are surrogate models obtained by statistical method. Generally, the reason why we increase sampling points during optimization process, is to get more reliable approximation models, but the more we adopt sampling points, the more we need time to test. So it is important to select approximation model and proper number of sampling points to balance between reliability and time consuming. In this research, we studied to compare two kind cases for a approximation construction. First, we compare RSM and Kriging which are Curve Fitting Method and Interpolation Method, respectively. Second, we construct approximation models using three different number of sampling points. And then, we recommend proper approximation model and orthogonal array adopt tire's design optimization.

Keywords

References

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