Vibration Diagnostic Methods from Methodsof Obtaining Data to Processing It Using Modern Means

Today, one of the main directions of industrial development is the digitalization of production processes. In order to achieve high production rates, the reliability of production equipment is necessary; more and more advanced means of its self-diagnosis are being developed. Thus, self-diagnosis, co...

Full description

Saved in:
Bibliographic Details
Main Authors: Anton O. Zhuravlev, Alexey O. Polyakov, Denis A. Andrikov
Format: Article
Language:English
Published: Peoples’ Friendship University of Russia (RUDN University) 2024-12-01
Series:RUDN Journal of Engineering Research
Subjects:
Online Access:https://journals.rudn.ru/engineering-researches/article/viewFile/43091/24515
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850027168970571776
author Anton O. Zhuravlev
Alexey O. Polyakov
Denis A. Andrikov
author_facet Anton O. Zhuravlev
Alexey O. Polyakov
Denis A. Andrikov
author_sort Anton O. Zhuravlev
collection DOAJ
description Today, one of the main directions of industrial development is the digitalization of production processes. In order to achieve high production rates, the reliability of production equipment is necessary; more and more advanced means of its self-diagnosis are being developed. Thus, self-diagnosis, combined with a high level of automated analytics, makes it possible to predict a malfunction with a high degree of probability, warn about the timing of its occurrence and methods of preventive elimination. This article discusses existing methods of vibration diagnostics, including those that appeared during the fourth industrial revolution, namely in the conditions of widespread and high-quality application of machine learning systems, neural networks and artificial intelligence. Methods for collecting primary information about vibration and methods for analyzing data using the above algorithms are described. The results of experimental applications of various analytical mechanisms developed to determine the type of defects in parts rotating under mechanical load are considered, and the advantages and disadvantages of each method are listed. The purpose of the review is to determine the existing methods of vibration diagnostics, determine their properties and compare them. As a result of the analysis, it was found that the most developing direction in the field of vibration signal research is a combination of wavelet transformation and neural network learning.
format Article
id doaj-art-e2913feb6a204d97b7ec10cd27d8028c
institution DOAJ
issn 2312-8143
2312-8151
language English
publishDate 2024-12-01
publisher Peoples’ Friendship University of Russia (RUDN University)
record_format Article
series RUDN Journal of Engineering Research
spelling doaj-art-e2913feb6a204d97b7ec10cd27d8028c2025-08-20T03:00:18ZengPeoples’ Friendship University of Russia (RUDN University)RUDN Journal of Engineering Research2312-81432312-81512024-12-0125438039610.22363/2312-8143-2024-25-4-380-39621139Vibration Diagnostic Methods from Methodsof Obtaining Data to Processing It Using Modern MeansAnton O. Zhuravlev0https://orcid.org/0009-0002-2900-6767Alexey O. Polyakov1https://orcid.org/0009-0001-5511-7551Denis A. Andrikov2https://orcid.org/0000-0003-0359-0897RUDN UniversityRUDN UniversityRUDN UniversityToday, one of the main directions of industrial development is the digitalization of production processes. In order to achieve high production rates, the reliability of production equipment is necessary; more and more advanced means of its self-diagnosis are being developed. Thus, self-diagnosis, combined with a high level of automated analytics, makes it possible to predict a malfunction with a high degree of probability, warn about the timing of its occurrence and methods of preventive elimination. This article discusses existing methods of vibration diagnostics, including those that appeared during the fourth industrial revolution, namely in the conditions of widespread and high-quality application of machine learning systems, neural networks and artificial intelligence. Methods for collecting primary information about vibration and methods for analyzing data using the above algorithms are described. The results of experimental applications of various analytical mechanisms developed to determine the type of defects in parts rotating under mechanical load are considered, and the advantages and disadvantages of each method are listed. The purpose of the review is to determine the existing methods of vibration diagnostics, determine their properties and compare them. As a result of the analysis, it was found that the most developing direction in the field of vibration signal research is a combination of wavelet transformation and neural network learning.https://journals.rudn.ru/engineering-researches/article/viewFile/43091/24515vibration diagnosticsdigital signal processingwaveletneural networkdeep learningnon-stationary object
spellingShingle Anton O. Zhuravlev
Alexey O. Polyakov
Denis A. Andrikov
Vibration Diagnostic Methods from Methodsof Obtaining Data to Processing It Using Modern Means
RUDN Journal of Engineering Research
vibration diagnostics
digital signal processing
wavelet
neural network
deep learning
non-stationary object
title Vibration Diagnostic Methods from Methodsof Obtaining Data to Processing It Using Modern Means
title_full Vibration Diagnostic Methods from Methodsof Obtaining Data to Processing It Using Modern Means
title_fullStr Vibration Diagnostic Methods from Methodsof Obtaining Data to Processing It Using Modern Means
title_full_unstemmed Vibration Diagnostic Methods from Methodsof Obtaining Data to Processing It Using Modern Means
title_short Vibration Diagnostic Methods from Methodsof Obtaining Data to Processing It Using Modern Means
title_sort vibration diagnostic methods from methodsof obtaining data to processing it using modern means
topic vibration diagnostics
digital signal processing
wavelet
neural network
deep learning
non-stationary object
url https://journals.rudn.ru/engineering-researches/article/viewFile/43091/24515
work_keys_str_mv AT antonozhuravlev vibrationdiagnosticmethodsfrommethodsofobtainingdatatoprocessingitusingmodernmeans
AT alexeyopolyakov vibrationdiagnosticmethodsfrommethodsofobtainingdatatoprocessingitusingmodernmeans
AT denisaandrikov vibrationdiagnosticmethodsfrommethodsofobtainingdatatoprocessingitusingmodernmeans