2020
DOI: 10.3390/app10175943
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The Objective Space and the Formulation of Design Requirement in Natural Laminar Flow Optimization

Abstract: Design requirement is as important in aerodynamic design as in other industries because it sets up the objective for the samples in design space to approach. Natural Laminar Flow (NLF) optimization belongs to the type of aerodynamic design problems featured by the combination of distinct aerodynamic performance, where the design requirement is often formulated in form of summation of laminar-related performance and pressure drag performance with different weight assignment according to different perspectives. … Show more

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Cited by 9 publications
(6 citation statements)
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References 57 publications
(70 reference statements)
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“…60 Each of the five new design variables is variated from the space of (À1.0, 1.0). The input number of samples for surrogate modelling is eventually 600 after geometric check, which is determined by the convergence criterion proposed in the authors' another work 36 : a dataset is presumed to be sufficient if its eigenvectors obtained via POD is converged in terms of directions, which is shown in Figure 9. The Kriging model is realized via Python package pyKriging.…”
Section: Surrogate Modellingmentioning
confidence: 99%
See 2 more Smart Citations
“…60 Each of the five new design variables is variated from the space of (À1.0, 1.0). The input number of samples for surrogate modelling is eventually 600 after geometric check, which is determined by the convergence criterion proposed in the authors' another work 36 : a dataset is presumed to be sufficient if its eigenvectors obtained via POD is converged in terms of directions, which is shown in Figure 9. The Kriging model is realized via Python package pyKriging.…”
Section: Surrogate Modellingmentioning
confidence: 99%
“…The percentage of qualified samples under posed geometric constraints from input seed population provides an estimation of the size of available design space. 36 As a closer observation of sampling, three different locations of the geometry are picked as is seen in Figure 4a, where the points from different control points contribute to the sampling of the rotor blade in different ways. The qualified is notably within the borders constituted by sampling seeds, which shows the completeness of the parametric perturbation.
Figure 3.The distribution of qualified samples among total sampled data: red, triangle markers represent total sampled data while blue, round ones represent qualified ones.
Figure 4.The selected three control points: their perturbation in sampling.
…”
Section: Problem Descriptionmentioning
confidence: 99%
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“…In [5], a new formulation of the design requirements in Natural Laminar Flow (NLF) optimization tasks is presented to make them less experience-based and much more grounded on quantitative criteria. The paper shows the impact of the proposed formulation on the result of NLF optimization in the design of transonic airfoils and aero-engine compressor blades from two perspectives: Pareto front convergence and the improving effect of accessory performance.…”
Section: Requirements In Design Processes: Open Issues Relevance and ...mentioning
confidence: 99%
“…Altogether, 550 samples are obtained via sampling: three parameters from the supplementary CST for the wing root and another three for the wing tip (therefore, all the parameters that are served as design variables are related only to the leading-edge region). The sample amount is appropriate for the optimization problem with six parameters 35 ; the optimization method is to select the best among the samples (i.e., enumeration among the samples in design space). The main idea of the optimization is to demonstrate the effect that can be brought by the supplementary CST method.…”
Section: Modification 1: Supplementary Vertical Cstmentioning
confidence: 99%