A comparison of approximation modeling techniques - Polynomial versus interpolating models
Author(s) -
Anthony Giunta,
Layne T. Watson
Publication year - 1998
Publication title -
7th aiaa/usaf/nasa/issmo symposium on multidisciplinary analysis and optimization
Language(s) - English
Resource type - Conference proceedings
DOI - 10.2514/6.1998-4758
Subject(s) - kriging , interpolation (computer graphics) , polynomial , mathematical optimization , mathematics , quadratic equation , maxima and minima , computer science , flexibility (engineering) , algorithm , statistics , machine learning , artificial intelligence , mathematical analysis , motion (physics) , geometry
Two methods of creating approximation models are compared through the calculation of the modeling accuracy on test problems involving one, five, and ten independent variables. Here, the test problems are representative of the modeling challenges typically encountered in realistic engineering optimization problems. The first approximation model is a quadratic polynomial created using the method of least squares. This type of polynomial model has seen considerable use in recent engineering optimization studies due to its computational simplicity and ease of use. However, quadratic polynomial models may be of limited accuracy when the response data to be modeled have multiple local extrema. The second approximation model employs an interpolation scheme known as kriging developed in the fields of spatial statistics and geostatistics. This class of interpolating model has the flexibility to model response data with multiple local extrema. However, this flexibility is obtained at an increase in computational expense and a decrease in ease of use. The intent of this study is to provide an initial exploration of the accuracy and modeling capabilities of these two approximation methods.
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