Anomaly Detection in Industrial Machinery Using IoT Devices and Machine Learning: A Systematic Mapping

Anomaly detection is critical in the smart industry for preventing equipment failure, reducing downtime, and improving safety. Internet of Things (IoT) has enabled the collection of large volumes of data from industrial machinery, providing a rich source of information for Anomaly Detection (AD). Ho...

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Main Authors: Sergio F. Chevtchenko, Elisson Da Silva Rocha, Monalisa Cristina Moura Dos Santos, Ricardo Lins Mota, Diego Moura Vieira, Ermeson Carneiro De Andrade, Danilo Ricardo Barbosa De Araujo
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10318838/
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author Sergio F. Chevtchenko
Elisson Da Silva Rocha
Monalisa Cristina Moura Dos Santos
Ricardo Lins Mota
Diego Moura Vieira
Ermeson Carneiro De Andrade
Danilo Ricardo Barbosa De Araujo
author_facet Sergio F. Chevtchenko
Elisson Da Silva Rocha
Monalisa Cristina Moura Dos Santos
Ricardo Lins Mota
Diego Moura Vieira
Ermeson Carneiro De Andrade
Danilo Ricardo Barbosa De Araujo
author_sort Sergio F. Chevtchenko
collection DOAJ
description Anomaly detection is critical in the smart industry for preventing equipment failure, reducing downtime, and improving safety. Internet of Things (IoT) has enabled the collection of large volumes of data from industrial machinery, providing a rich source of information for Anomaly Detection (AD). However, the volume and complexity of data generated by the Internet of Things ecosystems make it difficult for humans to detect anomalies manually. Machine learning (ML) algorithms can automate anomaly detection in industrial machinery by analyzing generated data. Besides, each technique has specific strengths and weaknesses based on the data nature and its corresponding systems. However, a large portion of the existing systematic mapping studies on AD primarily focus on addressing network and cybersecurity-related problems, with limited attention given to the industrial sector. Additionally, the related literature do not cover the challenges involved in using ML for AD in industrial machinery within the context of the IoT ecosystems. Therefore, this paper presents a systematic mapping study on AD for industrial machinery using IoT devices and ML algorithms to address this gap. Our primary objective is to investigate the use of ML models for anomaly detection within an industrial setting, particularly within IoT ecosystems. The study comprehensively evaluates 84 relevant studies spanning from 2016 to 2023, providing an extensive review of AD research. Our findings identify the most commonly used algorithms, preprocessing techniques, and sensor types. Additionally, this review identifies application areas and points to future challenges and research opportunities.
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spelling doaj.art-aa088349abb145a587121c1723472f592023-11-21T00:01:14ZengIEEEIEEE Access2169-35362023-01-011112828812830510.1109/ACCESS.2023.333324210318838Anomaly Detection in Industrial Machinery Using IoT Devices and Machine Learning: A Systematic MappingSergio F. Chevtchenko0https://orcid.org/0000-0001-8283-5578Elisson Da Silva Rocha1Monalisa Cristina Moura Dos Santos2Ricardo Lins Mota3Diego Moura Vieira4Ermeson Carneiro De Andrade5Danilo Ricardo Barbosa De Araujo6SENAI Institute of Innovation for Information and Communication Technologies (ISI-TICs), Recife, BrazilSENAI Institute of Innovation for Information and Communication Technologies (ISI-TICs), Recife, BrazilSENAI Institute of Innovation for Information and Communication Technologies (ISI-TICs), Recife, BrazilSENAI Institute of Innovation for Information and Communication Technologies (ISI-TICs), Recife, BrazilSENAI Institute of Innovation for Information and Communication Technologies (ISI-TICs), Recife, BrazilDepartment of Computing, Federal Rural University of Pernambuco (UFRPE), Recife, BrazilDepartment of Computing, Federal Rural University of Pernambuco (UFRPE), Recife, BrazilAnomaly detection is critical in the smart industry for preventing equipment failure, reducing downtime, and improving safety. Internet of Things (IoT) has enabled the collection of large volumes of data from industrial machinery, providing a rich source of information for Anomaly Detection (AD). However, the volume and complexity of data generated by the Internet of Things ecosystems make it difficult for humans to detect anomalies manually. Machine learning (ML) algorithms can automate anomaly detection in industrial machinery by analyzing generated data. Besides, each technique has specific strengths and weaknesses based on the data nature and its corresponding systems. However, a large portion of the existing systematic mapping studies on AD primarily focus on addressing network and cybersecurity-related problems, with limited attention given to the industrial sector. Additionally, the related literature do not cover the challenges involved in using ML for AD in industrial machinery within the context of the IoT ecosystems. Therefore, this paper presents a systematic mapping study on AD for industrial machinery using IoT devices and ML algorithms to address this gap. Our primary objective is to investigate the use of ML models for anomaly detection within an industrial setting, particularly within IoT ecosystems. The study comprehensively evaluates 84 relevant studies spanning from 2016 to 2023, providing an extensive review of AD research. Our findings identify the most commonly used algorithms, preprocessing techniques, and sensor types. Additionally, this review identifies application areas and points to future challenges and research opportunities.https://ieeexplore.ieee.org/document/10318838/Anomaly detectionIoT ecosystemsmachine learningmapping study
spellingShingle Sergio F. Chevtchenko
Elisson Da Silva Rocha
Monalisa Cristina Moura Dos Santos
Ricardo Lins Mota
Diego Moura Vieira
Ermeson Carneiro De Andrade
Danilo Ricardo Barbosa De Araujo
Anomaly Detection in Industrial Machinery Using IoT Devices and Machine Learning: A Systematic Mapping
IEEE Access
Anomaly detection
IoT ecosystems
machine learning
mapping study
title Anomaly Detection in Industrial Machinery Using IoT Devices and Machine Learning: A Systematic Mapping
title_full Anomaly Detection in Industrial Machinery Using IoT Devices and Machine Learning: A Systematic Mapping
title_fullStr Anomaly Detection in Industrial Machinery Using IoT Devices and Machine Learning: A Systematic Mapping
title_full_unstemmed Anomaly Detection in Industrial Machinery Using IoT Devices and Machine Learning: A Systematic Mapping
title_short Anomaly Detection in Industrial Machinery Using IoT Devices and Machine Learning: A Systematic Mapping
title_sort anomaly detection in industrial machinery using iot devices and machine learning a systematic mapping
topic Anomaly detection
IoT ecosystems
machine learning
mapping study
url https://ieeexplore.ieee.org/document/10318838/
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