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DeepONet-Assisted Optimization of Surface Topography for Transition Delay in a Mach 4.5 Boundary LayerWe use deep learning, an ensemble variational technique (EnVar), and direct numerical simulations(DNS) to design an optimal topography for a two-dimensional roughness element that delays the on-set of laminar-turbulent transition in a Mach 4.5 flat-plate boundary layer. Deep operator networks (DeepONets), which have the known ability to learn complex nonlinear operators within dynamical systems, are used for machine learning. For the baseline configuration of a smooth flat plate, the second-mode waves at the DNS inflow cause a quick nonlinear breakdown of the high-speed boundary layer within the computational domain. Results reported in the present study validate the ability of DeepONets to model the transition delay via a given topography of the roughness element. The computing cost to optimize the rough-ness element for minimal skin-friction drag is substantially lowered by the DeepONets-based reduced-order model. In comparison to the baseline method of EnVar optimization based on DNS alone, the DeepONets-based EnVar optimizer is able to delay transition past the outflow boundary of the computational domain while utilizing almost 5–6 times fewer DNS.
Document ID
20230012137
Acquisition Source
Langley Research Center
Document Type
Presentation
Authors
Nathaniel Hildebrand
(Langley Research Center Hampton, Virginia, United States)
Vishal Srivastava
(Analytical Mechanics Associates (United States) Hampton, Virginia, United States)
Meelan M Choudhari
(Langley Research Center Hampton, Virginia, United States)
Tamer A. Zaki
(Johns Hopkins University Baltimore, Maryland, United States)
Date Acquired
August 15, 2023
Subject Category
Aerodynamics
Computer Operations and Hardware
Meeting Information
Meeting: 14th International ERCOFTAC Symposium on Engineering Turbulence Modelling and Measurements (ETMM14)
Location: Barcelona
Country: ES
Start Date: September 6, 2023
End Date: September 8, 2023
Sponsors: European Research Community On Flow, Turbulence and Combustion (ERCOFTAC)
Funding Number(s)
WBS: 533127.02.35.07
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
NASA Peer Committee
Keywords
Machine Learning
Transition
DNS
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