Journal Article10.2514/1.J051354
Hierarchical Kriging Model for Variable-Fidelity Surrogate Modeling
Zhong-Hua Han,Stefan Görtz +1 more
393
TL;DR: It is observed that hierarchical kriging provides a more reasonable mean-squared-error estimation than traditional cokriging and can be applied to the efficient aerodynamic analysis and shape optimization of aircraft or anywhere where computer codes of varying fidelity are in use.
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Abstract: The efficiency of building a surrogate model for the output of a computer code can be dramatically improved via variable-fidelity surrogate modeling techniques. In this article, a hierarchical kriging model is proposed and used for variable-fidelity surrogate modeling problems. Here, hierarchical kriging refers to a surrogate model of a highfidelity function that uses a kriging model of a sampled lower-fidelity function as a model trend. As a consequence, the variation in the lower-fidelity data is mapped to the high-fidelity data, and a more accurate surrogate model for the high-fidelity function is obtained. A self-contained derivation of the hierarchical kriging model is presented. The proposed method is demonstrated with an analytical example and used for modeling the aerodynamic data of an RAE 2822 airfoil and an industrial transport aircraft configuration. The numerical examples show that it is efficient, accurate, and robust. It is also observed that hierarchical kriging provides a more reasonable mean-squared-error estimation than traditional cokriging. It can be applied to the efficient aerodynamic analysis and shape optimization of aircraft or any other research areas where computer codes of varying fidelity are in use.
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Citations
Variable-fidelity surrogate model based on transfer learning and its application in multidisciplinary design optimization of aircraft
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TL;DR: A variable-fidelity deep neural network surrogate model based on transfer learning (VDNN-TL) that selects and retains information encapsulated in different fidelity data through transfer neural network layers, reducing the model's demand for data correlation and enhancing modeling robustness is proposed.
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TL;DR: In this paper , a multi-fidelity, multi-objective (MFMO) optimization framework is developed and tested for the application of high-altitude propeller optimization.
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A Multi-Fidelity Approximation of the Active Subspace Method for Surrogate Models with High-Dimensional Inputs
Bilal Mufti,Mengzhen Chen,Christian Perron,Dimitri N. Mavris +3 more
- 20 Jun 2022
TL;DR: In this paper , a multi-fidelity strategy was proposed to extract an approximation of the high-dimensional active subspace by using a low-dimensional simulation of an airfoil and a wing.
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A GAN-based dimensionality reduction technique for aerodynamic shape optimization
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4
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