Modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithm

Robust performance is the most important concern in the design of any product, especially in system design stage that precedes parameter design, because it actually determines the attainable level of product robustness in the parameter design phase. In this article, a framework of modelling and anal...

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Main Authors: Xianfu Cheng, Shengcai Zhang, Tao Wang
Format: Article
Language:English
Published: SAGE Publishing 2015-08-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814015598694
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spelling doaj-f9d321d19d1b4d6cb3099e90217c656f2020-11-25T03:51:58ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402015-08-01710.1177/168781401559869410.1177_1687814015598694Modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithmXianfu ChengShengcai ZhangTao WangRobust performance is the most important concern in the design of any product, especially in system design stage that precedes parameter design, because it actually determines the attainable level of product robustness in the parameter design phase. In this article, a framework of modelling and analysis of system robustness is proposed, which includes system modelling, cluster analysis and design of experiments. In the process of system modelling, the metamodel of general design theory was utilized to describe the function–structure model of product design, and the customer needs are transformed into functional requirements. Based on the independent axiom and zigzag mapping mode of axiomatic design, the functional requirements are mapping to design parameters, and the design matrix is created, which is then converted into design structure matrix by identifying the relationship between functional requirements and the sensitivity of functional requirements to design parameters. The fuzzy clustering algorithm is utilized to cluster the design parameters and to group the system components into modules in design structure matrix, and the interface among modules can be identified and system robustness incidence matrix is developed. Then the incidence parameters are considered as controllable factors, and experimental design techniques are utilized to analyse the influence of incidence parameters on the design objectives, if any, that may result in a robust system. The proposed framework is illustrated with the trolley design of overhead travelling crane.https://doi.org/10.1177/1687814015598694
collection DOAJ
language English
format Article
sources DOAJ
author Xianfu Cheng
Shengcai Zhang
Tao Wang
spellingShingle Xianfu Cheng
Shengcai Zhang
Tao Wang
Modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithm
Advances in Mechanical Engineering
author_facet Xianfu Cheng
Shengcai Zhang
Tao Wang
author_sort Xianfu Cheng
title Modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithm
title_short Modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithm
title_full Modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithm
title_fullStr Modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithm
title_full_unstemmed Modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithm
title_sort modelling and analysis of system robustness for mechanical product based on axiomatic design and fuzzy clustering algorithm
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8140
publishDate 2015-08-01
description Robust performance is the most important concern in the design of any product, especially in system design stage that precedes parameter design, because it actually determines the attainable level of product robustness in the parameter design phase. In this article, a framework of modelling and analysis of system robustness is proposed, which includes system modelling, cluster analysis and design of experiments. In the process of system modelling, the metamodel of general design theory was utilized to describe the function–structure model of product design, and the customer needs are transformed into functional requirements. Based on the independent axiom and zigzag mapping mode of axiomatic design, the functional requirements are mapping to design parameters, and the design matrix is created, which is then converted into design structure matrix by identifying the relationship between functional requirements and the sensitivity of functional requirements to design parameters. The fuzzy clustering algorithm is utilized to cluster the design parameters and to group the system components into modules in design structure matrix, and the interface among modules can be identified and system robustness incidence matrix is developed. Then the incidence parameters are considered as controllable factors, and experimental design techniques are utilized to analyse the influence of incidence parameters on the design objectives, if any, that may result in a robust system. The proposed framework is illustrated with the trolley design of overhead travelling crane.
url https://doi.org/10.1177/1687814015598694
work_keys_str_mv AT xianfucheng modellingandanalysisofsystemrobustnessformechanicalproductbasedonaxiomaticdesignandfuzzyclusteringalgorithm
AT shengcaizhang modellingandanalysisofsystemrobustnessformechanicalproductbasedonaxiomaticdesignandfuzzyclusteringalgorithm
AT taowang modellingandanalysisofsystemrobustnessformechanicalproductbasedonaxiomaticdesignandfuzzyclusteringalgorithm
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