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Semi-Supervised Learning of Lift Optimization of Multi-Element Three-Segment Variable Camber AirfoilThis chapter describes a new intelligent platform for learning optimal designs of morphing wings based on Variable Camber Continuous Trailing Edge Flaps (VCCTEF) in conjunction with a leading edge flap called the Variable Camber Krueger (VCK). The new platform consists of a Computational Fluid Dynamics (CFD) methodology coupled with a semi-supervised learning methodology. The CFD component of the intelligent platform comprises of a full Navier-Stokes solution capability (NASA OVERFLOW solver with Spalart-Allmaras turbulence model) that computes flow over a tri-element inboard NASA Generic Transport Model (GTM) wing section. Various VCCTEF/VCK settings and configurations were considered to explore optimal design for high-lift flight during take-off and landing. To determine globally optimal design of such a system, an extremely large set of CFD simulations is needed. This is not feasible to achieve in practice. To alleviate this problem, a recourse was taken to a semi-supervised learning (SSL) methodology, which is based on manifold regularization techniques. A reasonable space of CFD solutions was populated and then the SSL methodology was used to fit this manifold in its entirety, including the gaps in the manifold where there were no CFD solutions available. The SSL methodology in conjunction with an elastodynamic solver (FiDDLE) was demonstrated in an earlier study involving structural health monitoring. These CFD-SSL methodologies define the new intelligent platform that forms the basis for our search for optimal design of wings. Although the present platform can be used in various other design and operational problems in engineering, this chapter focuses on the high-lift study of the VCK-VCCTEF system. Top few candidate design configurations were identified by solving the CFD problem in a small subset of the design space. The SSL component was trained on the design space, and was then used in a predictive mode to populate a selected set of test points outside of the given design space. The new design test space thus populated was evaluated by using the CFD component by determining the error between the SSL predictions and the true (CFD) solutions, which was found to be small. This demonstrates the proposed CFD-SSL methodologies for isolating the best design of the VCK-VCCTEF system, and it holds promise for quantitatively identifying best designs of flight systems, in general.
Document ID
20170011174
Acquisition Source
Ames Research Center
Document Type
Book Chapter
Authors
Kaul, Upender K.
(NASA Ames Research Center Moffett Field, CA, United States)
Nguyen, Nhan T.
(NASA Ames Research Center Moffett Field, CA, United States)
Date Acquired
November 21, 2017
Publication Date
January 1, 2017
Subject Category
Aerodynamics
Report/Patent Number
ARC-E-DAA-TN37043
Funding Number(s)
TASK: NNL12AD09T
CONTRACT_GRANT: NNL11AA05B
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
Keywords
Intelligent Systems
Semi-Supervised Learning
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