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Advances in Robust Engineering Design

Workshop at Matforsk, Ås, Norway 13 th -14 th May 2004 Design of Experiments – Benefits to Industry. Advances in Robust Engineering Design. Henry Wynn and Ron Bates Department of Statistics. Background. 2 EU-Funded Projects:

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Advances in Robust Engineering Design

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  1. Workshop at Matforsk, Ås, Norway13th-14th May 2004Design of Experiments – Benefits to Industry Advances in Robust Engineering Design Henry Wynn and Ron Bates Department of Statistics

  2. Background • 2 EU-Funded Projects: • (CE)2 : Computer Experiments for Concurrent Engineering (1997-2000) • TITOSIM: Time to Market via Statistical Information Management (2001-2004) Wynn & Bates, Dept. of Statistics, LSE

  3. What is Robustness? • Many different definitions • Many different areas • Biological • Systems theory • Software design • Engineering design, Reliability …. • Quick Google web search : 176,000 entries • 16 different definitions on one website! Wynn & Bates, Dept. of Statistics, LSE

  4. Working definitions (Santa Fe Inst.) • 1. Robustness is the persistence of specified system features in the face of a specified assembly of insults. • 2. Robustness is the ability of a system to maintain function even with changes in internal structure or external environment. • 3. Robustness is the ability of a system with a fixed structure to perform multiple functional tasks as needed in a changing environment. • 4. Robustness is the degree to which a system or component can function correctly in the presence of invalid or conflicting inputs. • 5. A model is robust if it is true under assumptions different from those used in construction of the model. • 6. Robustness is the degree to which a system is insensitive to effects that are not considered in the design. • 7. Robustness signifies insensitivity against small deviations in the assumptions. • 8. Robust methods of estimation are methods that work well not only under ideal conditions, but also under conditions representing a departure from an assumed distribution or model. • 9. Robust statistical procedures are designed to reduce the sensitivity of the parameter estimates to failures in the assumption of the model. Wynn & Bates, Dept. of Statistics, LSE

  5. Continued… • 10. Robustness is the ability of software to react appropriately to abnormal circumstances. Software may be correct without being robust. • 11. Robustness of an analytical procedure is a measure of its ability to remain unaffected by small, but deliberate variations in method parameters, and provides an indication of its reliability during normal usage. • 12. Robustness is a design principle of natural, engineering, or social systems that have been designed or selected for stability. • 13. The robustness of an initial step is determined by the fraction of acceptable options with which it is compatible out of total number of options. • 14. A robust solution in an optimization problem is one that has the best performance under its worst case (max-min rule). • 15. "..instead of a nominal system, we study a family of systems and we say that a certain property (e.g., performance or stability) is robustly satisfied if it is satisfied for all members of the family." • 16. Robustness is a characteristic of systems with the ability to heal, self-repair, self-regulate, self-assemble, and/or self-replicate. • 17. The robustness of language (recognition, parsing, etc.) is a measure of the ability of human speakers to communicate despite incomplete information, ambiguity, and the constant element of surprise. Wynn & Bates, Dept. of Statistics, LSE

  6. Engineering design paradigms • Example: Clifton Suspension Bridge • Creative input vs. mathematical search Wynn & Bates, Dept. of Statistics, LSE

  7. A Framework for Redesign • Define the “Design Space”, • Write where, • Parameterisation is important Wynn & Bates, Dept. of Statistics, LSE

  8. Robustness in Engineering Design • Based around the notion of “Design Space” and “Performance Space” Wynn & Bates, Dept. of Statistics, LSE

  9. Adding Noise • No noise • Internal noise • External noise Wynn & Bates, Dept. of Statistics, LSE

  10. Propagation of variation • Monte Carlo • Flexible • Expensive • Analytic • Need to know function • Mathematically more complex • (Usually) restricted to univariate distributions Wynn & Bates, Dept. of Statistics, LSE

  11. Dual Response Methods • Estimate both mean m and variance s2 of a response or key performance indicator (KPI) • This leads to either: • Multi-Objective problem e.g. min(m,s2) • Constrained optimisation e.g. min(s2) subject to: t1<m< t2 Wynn & Bates, Dept. of Statistics, LSE

  12. Density 0% 5% 85 % 10% Response A B C Stochastic Responses • Output distribution type is unknown • Possibilities: • Estimate Mean & Variance (Dual Response) • Select another criteria e.g. % mass Wynn & Bates, Dept. of Statistics, LSE

  13. Stochastic Simulation (Monte Carlo) Wynn & Bates, Dept. of Statistics, LSE

  14. Piston Simulator Example Wynn & Bates, Dept. of Statistics, LSE

  15. Noise added to design factors New bounds for search space Wynn & Bates, Dept. of Statistics, LSE

  16. Experiment details • All 7 design factors are subject to noise • Minimize both mean and standard deviation of cycle time response • Perform 50 simulations in a sub-region of the design space: • For each simulation, compute mean and std of cycle time with 50 simulations Wynn & Bates, Dept. of Statistics, LSE

  17. Visualisation of search strategy Wynn & Bates, Dept. of Statistics, LSE

  18. Searching for an improved design Wynn & Bates, Dept. of Statistics, LSE

  19. Features of Stochastic Simulation • Large number of runs required (17500) • No errors introduced by modelling • Design improvement, but not optimisation. • Can accept any type of input noise (e.g. any distribution, multivariate) • Can be applied to highly nonlinear problems Wynn & Bates, Dept. of Statistics, LSE

  20. Statistical Modelling: Emulation • Perform computer experiment on simulator and replace with emulator… Wynn & Bates, Dept. of Statistics, LSE

  21. Experimentation using the Emulator • Perform a 2nd experiment on emulator and estimate output distribution using Monte Carlo Wynn & Bates, Dept. of Statistics, LSE

  22. Stochastic Emulation • Build 2ndstochastic emulator to estimate stochastic response… Wynn & Bates, Dept. of Statistics, LSE

  23. Piston Simulator Example • Initial experiment, 64-run LHS design • DACE Emulator of Cycle Time fitted Wynn & Bates, Dept. of Statistics, LSE

  24. Stochastic Emulators (m and s) Wynn & Bates, Dept. of Statistics, LSE

  25. Pareto-optimal design points Wynn & Bates, Dept. of Statistics, LSE

  26. Satellite simulation data • Historical data set • 999 simulation runs • Two responses: LOS and T • Data split into two sets of 96 and 903 points for modelling and prediction • Stochastic emulators built with reasonable accuracy Wynn & Bates, Dept. of Statistics, LSE

  27. Response “LOS” vs. Factor 6 Wynn & Bates, Dept. of Statistics, LSE

  28. DACE emulator models Wynn & Bates, Dept. of Statistics, LSE

  29. DACE Emulator Prediction Wynn & Bates, Dept. of Statistics, LSE

  30. Satellite Study: Pareto Front Wynn & Bates, Dept. of Statistics, LSE

  31. Conclusions • Need flexible methods to describe robustness in design • Simulations are expensive and therefore experiments need to be carefully designed • Stochastic Simulation can provide design improvement which may be useful in certain situations Wynn & Bates, Dept. of Statistics, LSE

  32. (more specific) Conclusions… • Two-level emulator approach provides a flexible way of achieving robust designs • Reduced number of simulations • Stochastic emulators used to estimate any feature of a response distribution • Method needs to be tested on more complex examples • Use of simulator gradient information may help when fitting emulators Wynn & Bates, Dept. of Statistics, LSE

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