Simulation-Based Generation of Representative and Valid Training Data for Acoustic Resonance Testing
Analyzing eigenfrequencies of serial parts by acoustic resonance testing enables an efficient nondestructive assessment of component quality or structural state. Usually, each application is based on experimentally acquired training data, which represent the typical natural vibration behavior of the...
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2020-09-01
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doaj-a4453d8482324838a1484887e2434bf02020-11-25T03:19:26ZengMDPI AGApplied Sciences2076-34172020-09-01106059605910.3390/app10176059Simulation-Based Generation of Representative and Valid Training Data for Acoustic Resonance TestingMatthias Heinrich0Ute Rabe1Bernd Valeske2Fraunhofer Institute for Nondestructive Testing IZFP, Campus E31, 66123 Saarbrücken, GermanyFraunhofer Institute for Nondestructive Testing IZFP, Campus E31, 66123 Saarbrücken, GermanyFraunhofer Institute for Nondestructive Testing IZFP, Campus E31, 66123 Saarbrücken, GermanyAnalyzing eigenfrequencies of serial parts by acoustic resonance testing enables an efficient nondestructive assessment of component quality or structural state. Usually, each application is based on experimentally acquired training data, which represent the typical natural vibration behavior of the component type to be inspected. From the training data, suitable test characteristics are identified according to the inspection objective. The experimental collection of training data, which involves selecting and characterizing numerous representing parts, is often associated with a great amount of effort. Instead, this work focuses on a simulation-based generation of synthetic training data. Within an application example, the eigenfrequencies of a set of virtual parts were calculated with FEM as a function of geometry. The resulting simulation values were adapted using empirical correction factors, which were derived from both calculated and measured eigenfrequencies of machine-made reference parts. The simulation-based data were finally used to form linear regression models within a training procedure. These models enabled the precise estimation of geometric dimensions of further machine-made parts using their measured eigenfrequencies as input data. The novel approach, which requires the experimental characterization of only a few real parts, can thus significantly reduce the effort associated with efficient and reliable acoustic resonance testing.https://www.mdpi.com/2076-3417/10/17/6059acoustic resonance testingresonance inspectioneigenfrequency analysisserial inspectionnondestructive testingfinite element eigenfrequency calculation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Matthias Heinrich Ute Rabe Bernd Valeske |
spellingShingle |
Matthias Heinrich Ute Rabe Bernd Valeske Simulation-Based Generation of Representative and Valid Training Data for Acoustic Resonance Testing Applied Sciences acoustic resonance testing resonance inspection eigenfrequency analysis serial inspection nondestructive testing finite element eigenfrequency calculation |
author_facet |
Matthias Heinrich Ute Rabe Bernd Valeske |
author_sort |
Matthias Heinrich |
title |
Simulation-Based Generation of Representative and Valid Training Data for Acoustic Resonance Testing |
title_short |
Simulation-Based Generation of Representative and Valid Training Data for Acoustic Resonance Testing |
title_full |
Simulation-Based Generation of Representative and Valid Training Data for Acoustic Resonance Testing |
title_fullStr |
Simulation-Based Generation of Representative and Valid Training Data for Acoustic Resonance Testing |
title_full_unstemmed |
Simulation-Based Generation of Representative and Valid Training Data for Acoustic Resonance Testing |
title_sort |
simulation-based generation of representative and valid training data for acoustic resonance testing |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2020-09-01 |
description |
Analyzing eigenfrequencies of serial parts by acoustic resonance testing enables an efficient nondestructive assessment of component quality or structural state. Usually, each application is based on experimentally acquired training data, which represent the typical natural vibration behavior of the component type to be inspected. From the training data, suitable test characteristics are identified according to the inspection objective. The experimental collection of training data, which involves selecting and characterizing numerous representing parts, is often associated with a great amount of effort. Instead, this work focuses on a simulation-based generation of synthetic training data. Within an application example, the eigenfrequencies of a set of virtual parts were calculated with FEM as a function of geometry. The resulting simulation values were adapted using empirical correction factors, which were derived from both calculated and measured eigenfrequencies of machine-made reference parts. The simulation-based data were finally used to form linear regression models within a training procedure. These models enabled the precise estimation of geometric dimensions of further machine-made parts using their measured eigenfrequencies as input data. The novel approach, which requires the experimental characterization of only a few real parts, can thus significantly reduce the effort associated with efficient and reliable acoustic resonance testing. |
topic |
acoustic resonance testing resonance inspection eigenfrequency analysis serial inspection nondestructive testing finite element eigenfrequency calculation |
url |
https://www.mdpi.com/2076-3417/10/17/6059 |
work_keys_str_mv |
AT matthiasheinrich simulationbasedgenerationofrepresentativeandvalidtrainingdataforacousticresonancetesting AT uterabe simulationbasedgenerationofrepresentativeandvalidtrainingdataforacousticresonancetesting AT berndvaleske simulationbasedgenerationofrepresentativeandvalidtrainingdataforacousticresonancetesting |
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