Repository logo
Log In
  1. Home
  2. Unibas
  3. Publications
  4. Identifying key parameters for design improvement in high-dimensional systems with uncertainty
 
  • Details

Identifying key parameters for design improvement in high-dimensional systems with uncertainty

Date Issued
2014-01-01
Author(s)
Fender, Johannes
Graff, L.  
Harbrecht, H.  
Zimmermann, Markus
DOI
10.1115/1.4026647
Abstract
Key parameters may be used to turn a bad design into a good design with comparatively little effort. The proposed method identifies key parameters in high-dimensional nonlinear systems that are subject to uncertainty. A numerical optimization algorithm seeks a solution space on which all designs are good, that is, they satisfy a specified design criterion. The solution space is box-shaped and provides target intervals for each parameter. A bad design may be turned into a good design by moving its key parameters into their target intervals. The solution space is computed so as to minimize the effort for design work: its shape is controlled by particular constraints such that it can be reached by changing only a small number of key parameters. Wide target intervals provide tolerance against uncertainty, which is naturally present in a design process, when design parameters are unknown or cannot be controlled exactly. In a simple two-dimensional example problem, the accuracy of the algorithm is demonstrated. In a high-dimensional vehicle crash design problem, an underperforming vehicle front structure is improved by identifying and appropriately changing a relevant key parameter.
University of Basel

edoc
Open Access Repository University of Basel

  • About edoc
  • About Open Access at the University of Basel
  • edoc Policy

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science

  • Privacy policy
  • End User Agreement