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Virtual Test and Optimisation 

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Virtual

Virtual Test is about:

- Allocation of resources to do more early simulation

- Development of trust in simulation results

- Applying true Systems Engineering including upfront analysis

- Applying set-based engineering and develop knowledge

To investigate the total Design space (the possible variations of all involved parameters), the Test and the Calculation need to be in an organised way to ensure finding the best combinations of parameters

 

 

 

 

 

 

 

 

 

 

 

 

Virtual Optimisation is to find the optimal robust concept and includes the following steps:

- Design Of Experiment (DOE)

- Meta-Modelling

- Optimisation

- Robust Optimisation

- Uncertainty & Sensitivity Analysis

Virtual Test and Optimisation 

Virtual Test and Optimisation

Problems to address

- Long design cycle time

- Too many costly physical prototypes and testing

- High design cost considering narrow requirement tolerances

- Costly design loopbacks due to late design changes

- Poor product quality due to limited product knowledge leads to
  sub-optimisation of specific characteristics

 

Benefits

- Reduced design cycle time and costly physical prototypes and
  testing

- Improved tolerance settings based on the output variability

- Reduced late design changes and improved product quality due
  to systematic knowledge building

- Good balancing between all product characteristics

Presentation of Virtual Test and Optimisation The corresponding PPP is for sale (also describing the Taguchi method used when creating a  complete strength curve).

[1] Taguchi, G. , "Taguchi on Robust Technology Development, Bringing Quality Engineering
     Upstream", ASME Press, New York, 1993.

 

[2] T. W. Simpson, J. D. Peplinski, P. N. Koch, and J. K. Allen, "Metamodels for Computer-
     based Engineering Desing: Survey and Recommendations", Engineering with Computers
     17, 129–150, 2001.

 

[3] K. Deb, "Multi-Objective Optimization Using Evolutionary Algorithms", John Wiley & Sons,
     Ltd., Chichester, 2001.

 

[4] D. E. Goldberg, "Genetic Algorithm in Search, Optimization and Machine Learning",
     Addison-Wesley Publishing Company, Inc., Reading, Massachusetts, 1989.

 

[5] A. Saltelli, "Global Sensitivity Analysis – An Introduction", Tutorial Lecture for The
     International Conference on Sensitivity Analysis, Santa Fe, New Mexico, March 8 – 11,
     2004.

 

[6] A. Sudjianto, X. Du, and W. Chen, "Probabilistic Sensitivity Analysis in Engineering Design
     Using Uniform Sampling and Saddlepoint Approximation", Detroit Michigan, USA, 2005.

Reference

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