Abstract

Process integrity, insufficient data, and system complexity in the automotive manufacturing sector are the major uncertainty factors used to predict failure probability (FP), and which are very influential in achieving a reliable maintenance program. To deal with such uncertainties, this study proposes a fuzzy fault tree analysis (FFTA) approach as a proactive knowledge-based technique to estimate the FP towards a convenient maintenance plan in the automotive manufacturing industry. Furthermore, in order to enhance the accuracy of the FFTA model in predicting FP, the effective decision attributes, such as the experts’ trait impacts; scales variation; and assorted membership, and the defuzzification functions were investigated. Moreover, due to the undynamic relationship between the failures of complex systems in the current FFTA model, a Bayesian network (BN) theory was employed. The results of the FFTA model revealed that the changes in various decision attributes were not statistically significant for FP variation, while the BN model, that considered conditional rules to reflect the dynamic relationship between the failures, had a greater impact on predicting the FP. Additionally, the integrated FFTA–BN model was used in the optimization model to find the optimal maintenance intervals according to the estimated FP and total expected cost. As a case study, the proposed model was implemented in a fluid filling system in an automotive assembly line. The FPs of the entire system and its three critical subsystems, such as the filling headset, hydraulic–pneumatic circuit, and the electronic circuit, were estimated as 0.206, 0.057, 0.065, and 0.129, respectively. Moreover, the optimal maintenance interval for the whole filling system considering the total expected costs was determined as 7th with USD 3286 during 5000 h of the operation time.

Highlights

  • The reliability and safety guarantees of complex equipment, such as fluid filling systems in automotive manufacturing, are the key to preventing unexpected failures. Such systems suffer from crucial uncertainties, including sufficient operational data, the dependency between the failure of units, and the complexity of processes that cause some problems in the accuracy of the prediction of the failure probability [19,22]

  • (5000 h puted failure probability (FP) or reliability derived from the above Bayesian network (BN) model for a finite period (5000 h of of operation)

  • The authorsinformation developed an fault tree analysis (FTA) approach find anSince optimized scheduled-based subjected to epistemic uncertainty and static derived structureby limitations, the fuzzy set theory and maintenance with subjective information domain experts

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Summary

Introduction

Uncertainties derived from process integrity and the complexity issues of complex equipment, dependency issues among failures, as well as epistemic uncertainties due to the lack of precise and sufficient data to acquire a well-structured maintenance program [3,4,5,6,7]. Such fluctuations can affect the accuracy estimation of key indicators, such as the failure rate or failure probability (FP), as well as proper maintenance and production programs

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