2009
DOI: 10.1016/j.ress.2008.10.013
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An adaptive design and interpolation technique for extracting highly nonlinear response surfaces from deterministic models

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Cited by 12 publications
(7 citation statements)
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“…The polynomial response surface is easy to construct and, due to its smooth function characteristics, the optimization algorithm generally converges quickly, indicating its high efficiency. However, this method has poor accuracy in approximating highly nonlinear and irregular problems (Shahsavani and Grimvall, 2009).…”
Section: Combined Response Surface Methodologymentioning
confidence: 99%
“…The polynomial response surface is easy to construct and, due to its smooth function characteristics, the optimization algorithm generally converges quickly, indicating its high efficiency. However, this method has poor accuracy in approximating highly nonlinear and irregular problems (Shahsavani and Grimvall, 2009).…”
Section: Combined Response Surface Methodologymentioning
confidence: 99%
“…Recently, efforts have been devoted to develop output-oriented adaptive design algorithms that iteratively collect samples in the guidance of existing model outputs (Ajdari & Mahlooji, 2014;Busby, 2009;Busby et al, 2007;Crombecq et al, 2011;Liu et al, 2017;Mackman & Allen, 2010;Shahsavani & Grimvall, 2009;Ulaganathan et al, 2016;van der Herten et al, 2015). These methods combine the exploitation metric for identifying the nonlinear regions with the exploration criterion for locating the unsampled areas to adaptively select informative new samples.…”
Section: Introductionmentioning
confidence: 99%
“…For example, Crombecq et al (2011), van der Herten et al (2015, and Ulaganathan et al (2016) used the gradient information at the samples to identify the nonlinear areas and the Voronoi tessellation decomposition to balance the exploration and exploitation. Busby (2009) and Shahsavani and Grimvall (2009) also employed the idea of domain decomposition for balancing the two criteria, but used cross validation and a roughness criterion to determine nonlinear regions, respectively. Mackman and Allen (2010) used the product of sample separation and the estimated Laplacian to achieve the compromise between the exploration and exploitation.…”
Section: Introductionmentioning
confidence: 99%
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“…Metamodels are typically constructed by examining the response of the simulator to a limited number of intelligently chosen parameter sets. Examples of metamodeling techniques include: kriging [ Sacks et al , 1989; Sakata et al , 2003; Simpson and Mistree , 2001], neural networks [ Behzadian et al , 2009; Papadrakakis et al , 1998], radial basis functions [ Hussain et al , 2002; Mugunthan et al , 2005; Mullur and Messac , 2006; Nakayama et al , 2002], multivariate adaptive regression splines [ Friedman , 1991; Jin et al , 2001], high‐dimensional model representation [ Rabitz et al , 1999; Sobol , 2003], treed Gaussian processes [ Gramacy and Lee , 2008], Gaussian emulator machines [ Shahsavani and Grimall , 2009], proper orthogonal decomposition [ Audouze et al , 2009], and others [ Myers and Montgomery , 2002; Wang , 2003].…”
Section: Introductionmentioning
confidence: 99%