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Kernel-smoothed proper orthogonal decomposition-based emulation for spatiotemporally evolving flow dynamics prediction

Publication ,  Journal Article
Chang, YH; Zhang, L; Wang, X; Yeh, ST; Mak, S; Sung, CL; Jeff Wu, CF; Yang, V
Published in: AIAA Journal
January 1, 2019

This interdisciplinary study, which combines machine learning, statistical methodologies, high-fidelity simulations, projection-based model reduction, and flow physics, demonstrates a new process for building an efficient surrogate model to predict spatiotemporally evolving flow dynamics for design survey. In our previous work, a common proper-orthogonal-decomposition (CPOD) technique was developed to establish a physics-based surrogate (emulation) model for prediction of useful flow physics and design exploration over a wide parameter space. The emulation technique is substantially improved upon here using a kernel-smoothed POD (KSPOD) technique, which leverages kriging-based weighted functions from the design matrix. The resultant emulation model is then trained using a large-scale dataset obtained through high-fidelity simulations. As an example, the flow evolution in a swirl injector is considered for a wide range of design parameters and operating conditions. The KSPOD-based emulation model performs well and can faithfully capture the spatiotemporal flow dynamics. The model enables effective design surveys using high-fidelity simulation data, achieving a turnaround time for evaluating new design points that is 42,000 times faster than the original simulation.

Duke Scholars

Published In

AIAA Journal

DOI

ISSN

0001-1452

Publication Date

January 1, 2019

Volume

57

Issue

12

Start / End Page

5269 / 5280

Related Subject Headings

  • Aerospace & Aeronautics
  • 4012 Fluid mechanics and thermal engineering
  • 4001 Aerospace engineering
  • 0913 Mechanical Engineering
  • 0905 Civil Engineering
  • 0901 Aerospace Engineering
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Chang, Y. H., Zhang, L., Wang, X., Yeh, S. T., Mak, S., Sung, C. L., … Yang, V. (2019). Kernel-smoothed proper orthogonal decomposition-based emulation for spatiotemporally evolving flow dynamics prediction. AIAA Journal, 57(12), 5269–5280. https://doi.org/10.2514/1.J057803
Chang, Y. H., L. Zhang, X. Wang, S. T. Yeh, S. Mak, C. L. Sung, C. F. Jeff Wu, and V. Yang. “Kernel-smoothed proper orthogonal decomposition-based emulation for spatiotemporally evolving flow dynamics prediction.” AIAA Journal 57, no. 12 (January 1, 2019): 5269–80. https://doi.org/10.2514/1.J057803.
Chang YH, Zhang L, Wang X, Yeh ST, Mak S, Sung CL, et al. Kernel-smoothed proper orthogonal decomposition-based emulation for spatiotemporally evolving flow dynamics prediction. AIAA Journal. 2019 Jan 1;57(12):5269–80.
Chang, Y. H., et al. “Kernel-smoothed proper orthogonal decomposition-based emulation for spatiotemporally evolving flow dynamics prediction.” AIAA Journal, vol. 57, no. 12, Jan. 2019, pp. 5269–80. Scopus, doi:10.2514/1.J057803.
Chang YH, Zhang L, Wang X, Yeh ST, Mak S, Sung CL, Jeff Wu CF, Yang V. Kernel-smoothed proper orthogonal decomposition-based emulation for spatiotemporally evolving flow dynamics prediction. AIAA Journal. 2019 Jan 1;57(12):5269–5280.
Journal cover image

Published In

AIAA Journal

DOI

ISSN

0001-1452

Publication Date

January 1, 2019

Volume

57

Issue

12

Start / End Page

5269 / 5280

Related Subject Headings

  • Aerospace & Aeronautics
  • 4012 Fluid mechanics and thermal engineering
  • 4001 Aerospace engineering
  • 0913 Mechanical Engineering
  • 0905 Civil Engineering
  • 0901 Aerospace Engineering