Human reliability analysis in maintenance and repair operations of mining trucks: A Bayesian network approach

AuthorsMohammad Javad Rahimdel
JournalHeliyon
Page number1-14
Serial number10
Volume number15
Paper TypeFull Paper
Published At2024
Journal TypeElectronic
Journal CountryIran, Islamic Republic Of
Journal IndexISI،JCR،Scopus
KeywordsMaintenance, Mining trucks, Human reliability, Bayesian network, Fuzzy set theory

Abstract

Failures in mining machinery can abruptly halt mineral production and operations, emphasizing the indispensable role of humans in maintenance and repair operations. Addressing human errors is crucial for ensuring a safe and reliable system, particularly during maintenance activities where accidents frequently occur. This paper focuses on evaluating Human Reliability (HR) to enhance activity implementation effectiveness. Given the challenge of limited and uncertain data on human errors, this study aims to estimate the probability of human errors using Bayesian networks (BN) under uncertain parameters. Applying this approach to assess HR in the maintenance and repair operations of mining trucks at Golgohar Iron Ore Mine in Iran, the study identifies critical factors influencing error occurrence in a fuzzy environment. The results highlight key factors impacting human error and offer insights into estimating HR with minimal human intervention.

Paper URL