Abstract

To meet the availability target and reduce system downtime, effective maintenance have a great importance. However, maintenance performance is greatly affected in complex ways by human factors. Hence, to have an effective maintenance operation, these factors needs to be assessed and quantified. To avoid the inadequacies of traditional human error assessment (HEA) approaches, the application of Bayesian Networks (BN) is gaining popularity. The main purpose of this paper is to propose a HEA framework based on the BN for maintenance operation. The proposed framework aids for assessing the effects of human performance influencing factors on the likelihood of human error during maintenance activities. Further, the paper investigates how operational issues must be considered in system failure-rate analysis, maintenance planning, and prediction of human error in pre- and post-maintenance operations. The goal is to assess how performance monitoring and evaluation of human factors can effect better operation and maintenance.

Highlights

  • To meet the availability target and reduce system downtime, effective maintenance operation have a great importance

  • Noroozi, et al [1] proposed a risk-based methodology for pre- and postmaintenance and, illustrated how to calculate the human error probabilities (HEP) for both maintenance activity

  • The proposed framework can help to assess the effects of human performance influencing factors (PIFs) on the likelihood of human error during maintenance activities

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Summary

Related content

To cite this article: Y Z Ayele and A Barabadi 2017 IOP Conf. Ser.: Mater.

Introduction
Tr C
Construct a BN structure
Perform inference to estimate the posterior probabilities of the human error
Bayesian networks based human error assessment Performance influencing factors
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