A Model-Based SHM Strategy for Gears—Development of a Hybrid FEM-Analytical Approach to Investigate the Effects of Surface Fatigue on the Vibrational Spectra of a Back-to-Back Test Rig

Transmissions are extensively employed in mechanical gearboxes when power conversion is required. Being able to provide specific maintenance is a crucial factor for both economics and reliability. However, although periodic transmission maintenance increases the systems’ longevity, it cannot prevent...

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Main Authors: Franco Concli, Ludovico Pierri, Claudio Sbarufatti
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Applied Sciences
Subjects:
SHM
FEM
Online Access:https://www.mdpi.com/2076-3417/11/5/2026
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spelling doaj-ae4de505525f42e4b7ccdef57824df932021-02-26T00:03:06ZengMDPI AGApplied Sciences2076-34172021-02-01112026202610.3390/app11052026A Model-Based SHM Strategy for Gears—Development of a Hybrid FEM-Analytical Approach to Investigate the Effects of Surface Fatigue on the Vibrational Spectra of a Back-to-Back Test RigFranco Concli0Ludovico Pierri1Claudio Sbarufatti2Free University of Bolzano/Bozen, Faculty of Science and Technology, Piazza Università 1, 39100 Bolzano, ItalyDepartment of Mechanical Engineering, Politecnico di Milano, via la Masa 1, 20157 Milano, ItalyDepartment of Mechanical Engineering, Politecnico di Milano, via la Masa 1, 20157 Milano, ItalyTransmissions are extensively employed in mechanical gearboxes when power conversion is required. Being able to provide specific maintenance is a crucial factor for both economics and reliability. However, although periodic transmission maintenance increases the systems’ longevity, it cannot prevent or predict sporadic major failures. In this context, structural health monitoring (SHM) represents a possible solution. Identifying variations of a specific measurable signal and correlating them with the type of damage or its location and severity may help assess the component condition and establish the need for maintenance operation. However, the collection of sufficient experimental examples for damage identification may be not convenient for big gearboxes, for which destructive experiments are too expensive, thus paving the way to model-based approaches, based on a numerical estimation of damage-related features. In this work, an SHM approach was developed based on signals from numerical simulations. To validate the approach with experimental measurements, a back-to-back test rig was used as a reference. Several types and severities of damages were simulated with an innovative hybrid analytical–numerical approach that allowed a significant reduction of the computational effort. The vibrational spectra that characterized the different damage conditions were processed through artificial neural networks (ANN) trained with numerical data and used to predict the presence, location, and severity of the damage.https://www.mdpi.com/2076-3417/11/5/2026gearsSHMFEMpittingsurface fatigue
collection DOAJ
language English
format Article
sources DOAJ
author Franco Concli
Ludovico Pierri
Claudio Sbarufatti
spellingShingle Franco Concli
Ludovico Pierri
Claudio Sbarufatti
A Model-Based SHM Strategy for Gears—Development of a Hybrid FEM-Analytical Approach to Investigate the Effects of Surface Fatigue on the Vibrational Spectra of a Back-to-Back Test Rig
Applied Sciences
gears
SHM
FEM
pitting
surface fatigue
author_facet Franco Concli
Ludovico Pierri
Claudio Sbarufatti
author_sort Franco Concli
title A Model-Based SHM Strategy for Gears—Development of a Hybrid FEM-Analytical Approach to Investigate the Effects of Surface Fatigue on the Vibrational Spectra of a Back-to-Back Test Rig
title_short A Model-Based SHM Strategy for Gears—Development of a Hybrid FEM-Analytical Approach to Investigate the Effects of Surface Fatigue on the Vibrational Spectra of a Back-to-Back Test Rig
title_full A Model-Based SHM Strategy for Gears—Development of a Hybrid FEM-Analytical Approach to Investigate the Effects of Surface Fatigue on the Vibrational Spectra of a Back-to-Back Test Rig
title_fullStr A Model-Based SHM Strategy for Gears—Development of a Hybrid FEM-Analytical Approach to Investigate the Effects of Surface Fatigue on the Vibrational Spectra of a Back-to-Back Test Rig
title_full_unstemmed A Model-Based SHM Strategy for Gears—Development of a Hybrid FEM-Analytical Approach to Investigate the Effects of Surface Fatigue on the Vibrational Spectra of a Back-to-Back Test Rig
title_sort model-based shm strategy for gears—development of a hybrid fem-analytical approach to investigate the effects of surface fatigue on the vibrational spectra of a back-to-back test rig
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2021-02-01
description Transmissions are extensively employed in mechanical gearboxes when power conversion is required. Being able to provide specific maintenance is a crucial factor for both economics and reliability. However, although periodic transmission maintenance increases the systems’ longevity, it cannot prevent or predict sporadic major failures. In this context, structural health monitoring (SHM) represents a possible solution. Identifying variations of a specific measurable signal and correlating them with the type of damage or its location and severity may help assess the component condition and establish the need for maintenance operation. However, the collection of sufficient experimental examples for damage identification may be not convenient for big gearboxes, for which destructive experiments are too expensive, thus paving the way to model-based approaches, based on a numerical estimation of damage-related features. In this work, an SHM approach was developed based on signals from numerical simulations. To validate the approach with experimental measurements, a back-to-back test rig was used as a reference. Several types and severities of damages were simulated with an innovative hybrid analytical–numerical approach that allowed a significant reduction of the computational effort. The vibrational spectra that characterized the different damage conditions were processed through artificial neural networks (ANN) trained with numerical data and used to predict the presence, location, and severity of the damage.
topic gears
SHM
FEM
pitting
surface fatigue
url https://www.mdpi.com/2076-3417/11/5/2026
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