Development of the Optimization Design Module of a Brake System

제동 장치 최적 설계 모듈 개발

  • Jung, Sung-Pil (Graduate School of Mechanical Engineering, Ajou University) ;
  • Park, Tae-Won (School of Mechanical Engineering, Ajou University)
  • Published : 2008.05.01

Abstract

In this paper, the optimization design module for the brake system of a vehicle is developed. As using this module, design variables, that minimize an object function and satisfy nonlinear constraint conditions, can be found easily. Before an optimization is operated, Plackett-Burman design, one of the factorial design methods, is used to choose the design variables which affect a response function significantly. Using the response surface analysis, second order recursive model function, which informs a relation between design variables and response function, is estimated. In order to verify the reliability of the model function, analysis of variances(ANOVA) table is used. The value of design variables which minimize the model function and satisfy the constraint conditions is predicted through Sequential Quadratic-Programming (SQP) method. As applying the above procedure to a real vehicle simulation model and comparing the values of object functions of a current and optimized system, the optimization results are verified.

Keywords

References

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