A Non-Parametric Histogram Interpolation Method for Design Space Exploration

Author:

Pepper Nick1,Montomoli Francesco1,Sharma Sanjiv2

Affiliation:

1. UQLab, Department of Aeronatics, Imperial College London, London SW7 2BX, UK

2. Airbus, Bristol, UK

Abstract

AbstractA novel algorithm is presented to aid designers during the conceptual design phase of a new engineering product by rapidly assessing new areas of the design space. The algorithm presented here develops a polynomial chaos-based meta-model that allows the designer to estimate the probability distribution for a candidate design’s performance without requiring additional experiments or simulations. Probabilistic equivalence is used to map either a probability density function or a cumulative distribution function, continuous functions, into a reduced space in which interpolation functions can be developed. Data harvested from experiments or evaluations of an expensive computer code are used to train the meta-model. An advantage of this method over other histogram interpolation methods is that it is non-parametric: the training data are not assumed to belong to a particular family of probability distribution. The algorithm was validated using a standard benchmark test with synthetic data in a continuous-discrete design space. Finally, we exploited the variance of the Gaussian process emulators used as interpolation functions in order to develop a statistic that quantified the level of uncertainty associated with the algorithm’s estimates. This is a key feature if the algorithm is to be of practical use.

Publisher

ASME International

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications,Mechanical Engineering,Mechanics of Materials

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