Laminar-Turbulent Transition Localization in Thermographic Flow Visualization by Means of Principal Component Analysis

Thermographic flow visualization is a contactless, non-invasive technique to visualize the boundary layer flow on wind turbine rotor blades, to assess the aerodynamic condition and consequently the efficiency of the entire wind turbine. In applications on wind turbines in operation, the distinguisha...

Full description

Bibliographic Details
Main Authors: Daniel Gleichauf, Felix Oehme, Michael Sorg, Andreas Fischer
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/12/5471
id doaj-f26c681de03a4d59b153fc0a286a7637
record_format Article
spelling doaj-f26c681de03a4d59b153fc0a286a76372021-07-01T00:03:03ZengMDPI AGApplied Sciences2076-34172021-06-01115471547110.3390/app11125471Laminar-Turbulent Transition Localization in Thermographic Flow Visualization by Means of Principal Component AnalysisDaniel Gleichauf0Felix Oehme1Michael Sorg2Andreas Fischer3Bremen Institute for Metrology, Automation and Quality Science, University of Bremen, Linzer Str. 13, 28359 Bremen, GermanyBremen Institute for Metrology, Automation and Quality Science, University of Bremen, Linzer Str. 13, 28359 Bremen, GermanyBremen Institute for Metrology, Automation and Quality Science, University of Bremen, Linzer Str. 13, 28359 Bremen, GermanyBremen Institute for Metrology, Automation and Quality Science, University of Bremen, Linzer Str. 13, 28359 Bremen, GermanyThermographic flow visualization is a contactless, non-invasive technique to visualize the boundary layer flow on wind turbine rotor blades, to assess the aerodynamic condition and consequently the efficiency of the entire wind turbine. In applications on wind turbines in operation, the distinguishability between the laminar and turbulent flow regime cannot be easily increased artificially and solely depends on the energy input from the sun. State-of-the-art image processing methods are able to increase the contrast slightly but are not able to reduce systematic gradients in the image or need excessive a priori knowledge. In order to cope with a low-contrast measurement condition and to increase the distinguishability between the flow regimes, an enhanced image processing by means of the feature extraction method, principal component analysis, is introduced. The image processing is applied to an image series of thermographic flow visualizations of a steady flow situation in a wind tunnel experiment on a cylinder and DU96W180 airfoil measurement object without artificially increasing the thermal contrast between the flow regimes. The resulting feature images, based on the temporal temperature fluctuations in the images, are evaluated with regard to the global distinguishability between the laminar and turbulent flow regime as well as the achievable measurement error of an automatic localization of the local flow transition between the flow regimes. By applying the principal component analysis, systematic temperature gradients within the flow regimes as well as image artefacts such as reflections are reduced, leading to an increased contrast-to-noise ratio by a factor of 7.5. Additionally, the gradient between the laminar and turbulent flow regime is increased, leading to a minimal measurement error of the laminar-turbulent transition localization. The systematic error was reduced by 4% and the random error by 5.3% of the chord length. As a result, the principal component analysis is proven to be a valuable complementary tool to the classical image processing method in flow visualizations. After noise-reducing methods such as the temporal averaging and subsequent assessment of the spatial expansion of the boundary layer flow surface, the PCA is able to increase the laminar-turbulent flow regime distinguishability and reduce the systematic and random error of the flow transition localization in applications where no artificial increase in the contrast is possible. The enhancement of contrast increases the independence from the amount of solar energy input required for a flow evaluation, and the reduced errors of the flow transition localization enables a more precise assessment of the aerodynamic condition of the rotor blade.https://www.mdpi.com/2076-3417/11/12/5471thermographic flow visualizationimage processingprincipal component analysismeasurement error
collection DOAJ
language English
format Article
sources DOAJ
author Daniel Gleichauf
Felix Oehme
Michael Sorg
Andreas Fischer
spellingShingle Daniel Gleichauf
Felix Oehme
Michael Sorg
Andreas Fischer
Laminar-Turbulent Transition Localization in Thermographic Flow Visualization by Means of Principal Component Analysis
Applied Sciences
thermographic flow visualization
image processing
principal component analysis
measurement error
author_facet Daniel Gleichauf
Felix Oehme
Michael Sorg
Andreas Fischer
author_sort Daniel Gleichauf
title Laminar-Turbulent Transition Localization in Thermographic Flow Visualization by Means of Principal Component Analysis
title_short Laminar-Turbulent Transition Localization in Thermographic Flow Visualization by Means of Principal Component Analysis
title_full Laminar-Turbulent Transition Localization in Thermographic Flow Visualization by Means of Principal Component Analysis
title_fullStr Laminar-Turbulent Transition Localization in Thermographic Flow Visualization by Means of Principal Component Analysis
title_full_unstemmed Laminar-Turbulent Transition Localization in Thermographic Flow Visualization by Means of Principal Component Analysis
title_sort laminar-turbulent transition localization in thermographic flow visualization by means of principal component analysis
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2021-06-01
description Thermographic flow visualization is a contactless, non-invasive technique to visualize the boundary layer flow on wind turbine rotor blades, to assess the aerodynamic condition and consequently the efficiency of the entire wind turbine. In applications on wind turbines in operation, the distinguishability between the laminar and turbulent flow regime cannot be easily increased artificially and solely depends on the energy input from the sun. State-of-the-art image processing methods are able to increase the contrast slightly but are not able to reduce systematic gradients in the image or need excessive a priori knowledge. In order to cope with a low-contrast measurement condition and to increase the distinguishability between the flow regimes, an enhanced image processing by means of the feature extraction method, principal component analysis, is introduced. The image processing is applied to an image series of thermographic flow visualizations of a steady flow situation in a wind tunnel experiment on a cylinder and DU96W180 airfoil measurement object without artificially increasing the thermal contrast between the flow regimes. The resulting feature images, based on the temporal temperature fluctuations in the images, are evaluated with regard to the global distinguishability between the laminar and turbulent flow regime as well as the achievable measurement error of an automatic localization of the local flow transition between the flow regimes. By applying the principal component analysis, systematic temperature gradients within the flow regimes as well as image artefacts such as reflections are reduced, leading to an increased contrast-to-noise ratio by a factor of 7.5. Additionally, the gradient between the laminar and turbulent flow regime is increased, leading to a minimal measurement error of the laminar-turbulent transition localization. The systematic error was reduced by 4% and the random error by 5.3% of the chord length. As a result, the principal component analysis is proven to be a valuable complementary tool to the classical image processing method in flow visualizations. After noise-reducing methods such as the temporal averaging and subsequent assessment of the spatial expansion of the boundary layer flow surface, the PCA is able to increase the laminar-turbulent flow regime distinguishability and reduce the systematic and random error of the flow transition localization in applications where no artificial increase in the contrast is possible. The enhancement of contrast increases the independence from the amount of solar energy input required for a flow evaluation, and the reduced errors of the flow transition localization enables a more precise assessment of the aerodynamic condition of the rotor blade.
topic thermographic flow visualization
image processing
principal component analysis
measurement error
url https://www.mdpi.com/2076-3417/11/12/5471
work_keys_str_mv AT danielgleichauf laminarturbulenttransitionlocalizationinthermographicflowvisualizationbymeansofprincipalcomponentanalysis
AT felixoehme laminarturbulenttransitionlocalizationinthermographicflowvisualizationbymeansofprincipalcomponentanalysis
AT michaelsorg laminarturbulenttransitionlocalizationinthermographicflowvisualizationbymeansofprincipalcomponentanalysis
AT andreasfischer laminarturbulenttransitionlocalizationinthermographicflowvisualizationbymeansofprincipalcomponentanalysis
_version_ 1721349782352429056