Fuzzy Model for Risk Assessment of Machinery Failures

Објеката

Тип
Рад у часопису
Верзија рада
објављена верзија
Језик
енглески
Креатор
Dejan V. Petrović, Miloš Tanasijević, Saša Stojadinović, Jelena Ivaz, Pavle Stojković
Извор
Symmetry
Издавач
MDPI AG
Датум издавања
2020
Сажетак
The main goal of this research was the development of an algorithm for the implementation of negative risk parameters in a synthesis model for a risk level assessment for a specific machine used in the mining industry. Fuzzy sets and fuzzy logic theory, in combination with statistical methods, were applied to analyze the time picture state of the observed machine. Fuzzy logic is presented through fuzzy proposition and a fuzzy composition module. Using these tools, the symmetric position
of the fuzzy sets with regard to class was used, and the symmetric fuzzy inference approach was used in an outcome calculation. The main benefit of the proposed model is being able to use numerical
and linguistic data in a risk assessment model. The proposed risk assessment model, using fuzzy logic conclusions and min–max composition, was used on a mobile crushing machine. The results
indicated that the risk level of the mobile crushing machine was in the “high” category, which means that it is necessary to introduce maintenance policies based on this high risk. The proposed risk
assessment model is useful for any engineering system
том
12
издање
4
doi
10.3390/sym12040525
issn
2073-8994
Subject
fazi teorija, rizik, otkaz rudarskih mašina
fuzzy theory, risk, mining machinery failure
Шира категорија рада
M20
Ужа категорија рада
М22
Права
Отворени приступ
Лиценца
Creative Commons – Attribution-NonComercial-Share Alike 4.0 International
Формат
.pdf

Dejan V. Petrović, Miloš Tanasijević, Saša Stojadinović, Jelena Ivaz, Pavle Stojković. "Fuzzy Model for Risk Assessment of Machinery Failures" in Symmetry, MDPI AG (2020). https://doi.org/10.3390/sym12040525

This item was submitted on 9. јун 2021. by [anonymous user] using the form “Рад у часопису” on the site “Радови”: https://dr.rgf.bg.ac.rs/s/repo

Click here to view the collected data.