Statistical Tolerance Analysis of 3D-Printed Non-Assembly Mechanisms in Motion Using Empirical Predictive Models

Fused Deposition Modelling (FDM) enables the fabrication of entire non-assembly mechanisms within a single process step, making previously required assembly steps dispensable. Besides the advantages of FDM, the manufacturing of these mechanisms implies some shortcomings such as comparatively large j...

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Main Authors: Paul Schaechtl, Benjamin Schleich, Sandro Wartzack
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/4/1860
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spelling doaj-206f7411d77b445baf967e5092fcf1c92021-02-21T00:01:42ZengMDPI AGApplied Sciences2076-34172021-02-01111860186010.3390/app11041860Statistical Tolerance Analysis of 3D-Printed Non-Assembly Mechanisms in Motion Using Empirical Predictive ModelsPaul Schaechtl0Benjamin Schleich1Sandro Wartzack2Engineering Design, Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU), Martensstr 9, 91058 Erlangen, GermanyEngineering Design, Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU), Martensstr 9, 91058 Erlangen, GermanyEngineering Design, Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU), Martensstr 9, 91058 Erlangen, GermanyFused Deposition Modelling (FDM) enables the fabrication of entire non-assembly mechanisms within a single process step, making previously required assembly steps dispensable. Besides the advantages of FDM, the manufacturing of these mechanisms implies some shortcomings such as comparatively large joint clearances and geometric deviations depending on machine-specific process parameters. The current state-of-the-art concerning statistical tolerance analysis lacks in providing suitable methods for the consideration of these shortcomings, especially for 3D-printed mechanisms. Therefore, this contribution presents a novel methodology for ensuring the functionality of fully functional non-assembly mechanisms in motion by means of a statistical tolerance analysis considering geometric deviations and joint clearance. The process parameters and hence the geometric deviations are considered in terms of empirical predictive models using machine learning (ML) algorithms, which are implemented in the tolerance analysis for an early estimation of tolerances and resulting joint clearances. Missing information concerning the motion behaviour of the clearance affected joints are derived by a multi-body-simulation (MBS). The exemplarily application of the methodology to a planar 8-bar mechanism shows its applicability and benefits. The presented methodology allows evaluation of the design and the chosen process parameters of 3D-printed non-assembly mechanisms through a process-oriented tolerance analysis to fully exploit the potential of Additive Manufacturing (AM) in this field along with its ambition: ’Print first time right’.https://www.mdpi.com/2076-3417/11/4/1860additive manufacturingfused deposition modellingstatistical tolerance analysisnon-assembly mechanismsempirical predictive modelsgeometric deviations
collection DOAJ
language English
format Article
sources DOAJ
author Paul Schaechtl
Benjamin Schleich
Sandro Wartzack
spellingShingle Paul Schaechtl
Benjamin Schleich
Sandro Wartzack
Statistical Tolerance Analysis of 3D-Printed Non-Assembly Mechanisms in Motion Using Empirical Predictive Models
Applied Sciences
additive manufacturing
fused deposition modelling
statistical tolerance analysis
non-assembly mechanisms
empirical predictive models
geometric deviations
author_facet Paul Schaechtl
Benjamin Schleich
Sandro Wartzack
author_sort Paul Schaechtl
title Statistical Tolerance Analysis of 3D-Printed Non-Assembly Mechanisms in Motion Using Empirical Predictive Models
title_short Statistical Tolerance Analysis of 3D-Printed Non-Assembly Mechanisms in Motion Using Empirical Predictive Models
title_full Statistical Tolerance Analysis of 3D-Printed Non-Assembly Mechanisms in Motion Using Empirical Predictive Models
title_fullStr Statistical Tolerance Analysis of 3D-Printed Non-Assembly Mechanisms in Motion Using Empirical Predictive Models
title_full_unstemmed Statistical Tolerance Analysis of 3D-Printed Non-Assembly Mechanisms in Motion Using Empirical Predictive Models
title_sort statistical tolerance analysis of 3d-printed non-assembly mechanisms in motion using empirical predictive models
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2021-02-01
description Fused Deposition Modelling (FDM) enables the fabrication of entire non-assembly mechanisms within a single process step, making previously required assembly steps dispensable. Besides the advantages of FDM, the manufacturing of these mechanisms implies some shortcomings such as comparatively large joint clearances and geometric deviations depending on machine-specific process parameters. The current state-of-the-art concerning statistical tolerance analysis lacks in providing suitable methods for the consideration of these shortcomings, especially for 3D-printed mechanisms. Therefore, this contribution presents a novel methodology for ensuring the functionality of fully functional non-assembly mechanisms in motion by means of a statistical tolerance analysis considering geometric deviations and joint clearance. The process parameters and hence the geometric deviations are considered in terms of empirical predictive models using machine learning (ML) algorithms, which are implemented in the tolerance analysis for an early estimation of tolerances and resulting joint clearances. Missing information concerning the motion behaviour of the clearance affected joints are derived by a multi-body-simulation (MBS). The exemplarily application of the methodology to a planar 8-bar mechanism shows its applicability and benefits. The presented methodology allows evaluation of the design and the chosen process parameters of 3D-printed non-assembly mechanisms through a process-oriented tolerance analysis to fully exploit the potential of Additive Manufacturing (AM) in this field along with its ambition: ’Print first time right’.
topic additive manufacturing
fused deposition modelling
statistical tolerance analysis
non-assembly mechanisms
empirical predictive models
geometric deviations
url https://www.mdpi.com/2076-3417/11/4/1860
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AT sandrowartzack statisticaltoleranceanalysisof3dprintednonassemblymechanismsinmotionusingempiricalpredictivemodels
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