A fuzzy Bayesian network-based approach for modeling and analyzing factors causing process variability

IF 2.7 Q2 MANAGEMENT
Anwesa Kar, G. Sharma, R. Rai
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引用次数: 1

Abstract

PurposeIn order to minimize the impact of variability on performance of the process, proper understanding of factors interdependencies and their impact on process variability (PV) is required. However, with insufficient/incomplete numerical data, it is not possible to carry out in-depth process analysis. This paper presents a qualitative framework for analyzing factors causing PV and estimating their influence on overall performance of the process.Design/methodology/approachFuzzy analytic hierarchy process is used to evaluate the weight of each factor and Bayesian network (BN) is utilized to address the uncertainty and conditional dependencies among factors in each step of the process. The weighted values are fed into the BN for evaluating the impact of each factor to the process. A three axiom-based approach is utilized to partially validate the proposed model.FindingsA case study is conducted on fused filament fabrication (FFF) process in order to demonstrate the applicability of the proposed technique. The result analysis indicates that the proposed model can determine the contribution of each factor and identify the critical factor causing variability in the FFF process. It can also helps in estimating the sigma level, one of the crucial performance measures of a process.Research limitations/implicationsThe proposed methodology is aimed to predict the process quality qualitatively due to limited historical quantitative data. Hence, the quality metric is required to be updated with the help of empirical/field data of PV over a period of operational time. Since the proposed method is based on qualitative analysis framework, the subjectivities of judgments in estimating factor weights are involved. Though a fuzzy-based approach has been used in this paper to minimize such subjectivity, however more advanced MCDM techniques can be developed for factor weight evaluation.Practical implicationsAs the proposed methodology uses qualitative data for analysis, it is extremely beneficial while dealing with the issue of scarcity of experimental data.Social implicationsThe prediction of the process quality and understanding of difference between product target and achieved reliability before the product fabrication will help the process designer in correcting/modifying the processes in advance hence preventing substantial amount of losses that may happen due to rework and scraping of the products at a later stage.Originality/valueThis qualitative analysis will deal with the issue of data unavailability across the industry. It will help the process designer in identifying root cause of the PV problem and improving performance of the process.
基于模糊贝叶斯网络的过程变异性因素建模与分析方法
目的:为了尽量减少可变性对工艺性能的影响,需要正确理解各因素的相互依赖关系及其对工艺可变性的影响。然而,由于数值数据不足/不完整,无法进行深入的工艺分析。本文提出了一个定性框架来分析导致PV的因素,并估计它们对整个过程性能的影响。设计/方法/方法采用模糊层次分析法评估各因素的权重,利用贝叶斯网络(BN)解决各步骤中各因素之间的不确定性和条件依赖性。将加权值输入到BN中,以评估每个因素对过程的影响。利用基于三个公理的方法对所提出的模型进行了部分验证。为了证明所提出的技术的适用性,对熔丝制造(FFF)工艺进行了实例研究。结果分析表明,该模型可以确定FFF过程中各因素的贡献,并识别出导致FFF过程变异性的关键因素。它还可以帮助估计西格玛水平,这是过程的关键性能度量之一。研究局限性/意义由于历史定量数据有限,提出的方法旨在定性地预测过程质量。因此,质量指标需要在一段运行时间内PV的经验/现场数据的帮助下进行更新。由于该方法基于定性分析框架,在估计因子权重时涉及到判断的主观性。虽然本文使用了基于模糊的方法来最小化这种主观性,但是可以开发更先进的MCDM技术来进行因子权重评估。由于所提出的方法使用定性数据进行分析,因此在处理实验数据稀缺的问题时非常有益。社会意义在产品制造之前,对工艺质量的预测和对产品目标和已实现可靠性之间差异的理解,将有助于工艺设计者提前纠正/修改工艺,从而防止在后期由于返工和刮擦产品而可能发生的大量损失。原创性/价值这种定性分析将处理整个行业的数据不可用性问题。它将帮助工艺设计人员确定PV问题的根本原因并提高工艺性能。
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来源期刊
CiteScore
5.60
自引率
12.00%
发文量
53
期刊介绍: In today''s competitive business and industrial environment, it is essential to have an academic journal offering the most current theoretical knowledge on quality and reliability to ensure that top management is fully conversant with new thinking, techniques and developments in the field. The International Journal of Quality & Reliability Management (IJQRM) deals with all aspects of business improvements and with all aspects of manufacturing and services, from the training of (senior) managers, to innovations in organising and processing to raise standards of product and service quality. It is this unique blend of theoretical knowledge and managerial relevance that makes IJQRM a valuable resource for managers striving for higher standards.Coverage includes: -Reliability, availability & maintenance -Gauging, calibration & measurement -Life cycle costing & sustainability -Reliability Management of Systems -Service Quality -Green Marketing -Product liability -Product testing techniques & systems -Quality function deployment -Reliability & quality education & training -Productivity improvement -Performance improvement -(Regulatory) standards for quality & Quality Awards -Statistical process control -System modelling -Teamwork -Quality data & datamining
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