2012
DOI: 10.2514/1.j051354
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Hierarchical Kriging Model for Variable-Fidelity Surrogate Modeling

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Cited by 311 publications
(100 citation statements)
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“…One is the variable-fidelity model or multifidelity model. With assistance of the data obtained by simplified, lower-fidelity physical model or the same physical model on coarser computational grid, the accuracy of a surrogate model for high-fidelity and expensive function can be significantly enhanced [33,34]. In turn, the efficiency for solving an optimization problem can be remarkably improved [35][36][37][38][39].…”
mentioning
confidence: 93%
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“…One is the variable-fidelity model or multifidelity model. With assistance of the data obtained by simplified, lower-fidelity physical model or the same physical model on coarser computational grid, the accuracy of a surrogate model for high-fidelity and expensive function can be significantly enhanced [33,34]. In turn, the efficiency for solving an optimization problem can be remarkably improved [35][36][37][38][39].…”
mentioning
confidence: 93%
“…It has built-in modern DOE methods suited for deterministic computer experiments, such as LHS, UD, and Monte Carlo design. A variety of surrogate models, such as PRSM, kriging and its variants (GEK [47], cokriging [33], HK [34]), RBFs, ANN, SVR [22], etc., were implemented. A couple of infill-sampling criteria and dedicated constraint handling methods were implemented, such as minimizing surrogate predictor (MSP) [76], expected improvement [77,78], probability of improvement [5], mean-squared error (MSE) [79,80], lower-confidence bounding [51,81], target searching [74], and parallel infilling [30].…”
Section: A Integration Into a Surrogate-based Optimization Codementioning
confidence: 99%
“…The literature contains a number of examples of the effectiveness of this technique on problems including airfoil design [23][24][25], the creation of aerodynamic models [25][26][27][28][29], compressor blade design [3] and even whole engine optimization [10].…”
Section: Krigingmentioning
confidence: 99%
“…As the performance of any surrogate based optimization is determined by the accuracy of the model a more accurate model can significantly reduce the total number of simulations required for an optimization. Such multi-fidelity approaches have been successfully employed throughout the literature in the design optimization of airfoils [17,24,26], wings [3], compressor rotors [2], combustors [25] and the creation of aerodynamic models [7,[9][10][11]26]. 1 An example of single and multi-fidelity Kriging [5] Figure 1 is a simple example, recreated from Forrester et al [5], of the advantages that multi-fidelity Kriging can offer if used to create a surrogate model.…”
Section: Introductionmentioning
confidence: 99%