Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry

The widespread adoption of cyber-physical systems and other cutting-edge digital technology in manufacturing industry production facilities may motivate stakeholders to embrace the idea of Industry 4.0. Some industrial companies already have different sensors installed on their machines; however,...

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Main Authors: Cheng, Xiang, Chaw, Jun Kit, Goh, Kam Meng, Ting, Tin Tin, Shafrida, Sahrani, Mohammad Nazir, Ahmad, Rabiah, Abdul Kadir, Ang, Mei Choo
Format: Article
Published: MDPI AG, Basel, Switzerland 2022
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Online Access:http://eprints.intimal.edu.my/1713/
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author Cheng, Xiang
Chaw, Jun Kit
Goh, Kam Meng
Ting, Tin Tin
Shafrida, Sahrani
Mohammad Nazir, Ahmad
Rabiah, Abdul Kadir
Ang, Mei Choo
author_facet Cheng, Xiang
Chaw, Jun Kit
Goh, Kam Meng
Ting, Tin Tin
Shafrida, Sahrani
Mohammad Nazir, Ahmad
Rabiah, Abdul Kadir
Ang, Mei Choo
author_sort Cheng, Xiang
building INTI Institutional Repository
collection Online Access
description The widespread adoption of cyber-physical systems and other cutting-edge digital technology in manufacturing industry production facilities may motivate stakeholders to embrace the idea of Industry 4.0. Some industrial companies already have different sensors installed on their machines; however, without proper analysis, the data collected is not useful. This systematic review’s main goal is to synthesize the existing evidence on the application of predictive maintenance (PdM) with visual aids and to identify the key knowledge gaps in areas including utilities, power generation, industry, and energy consumption. After a thorough search and evaluation for relevancy, 37 documents were identified. Moreover, we identified the visual analytics of PdM, including anomaly detection, planning/scheduling, exploratory data analysis (EDA), and explainable artificial intelligence (XAI). The findings revealed that anomaly detection was a major domain in PdM-related works. We conclude that most of the literature lacks depth in terms of an overall framework that combines data-driven and knowledge-driven techniques of PdM in the manufacturing industry. Some works that utilized both techniques indicated promising results, but there is insufficient research on involving maintenance personnel’s feedback in the latter stage of PdM architecture. Thus, there are still pertinent issues that need to be investigated, and limitations that need to be overcome before PdM is deployed with minimal human involvement.
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spelling intimal-17132023-01-17T03:56:26Z http://eprints.intimal.edu.my/1713/ Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry Cheng, Xiang Chaw, Jun Kit Goh, Kam Meng Ting, Tin Tin Shafrida, Sahrani Mohammad Nazir, Ahmad Rabiah, Abdul Kadir Ang, Mei Choo Q Science (General) QA75 Electronic computers. Computer science QA76 Computer software The widespread adoption of cyber-physical systems and other cutting-edge digital technology in manufacturing industry production facilities may motivate stakeholders to embrace the idea of Industry 4.0. Some industrial companies already have different sensors installed on their machines; however, without proper analysis, the data collected is not useful. This systematic review’s main goal is to synthesize the existing evidence on the application of predictive maintenance (PdM) with visual aids and to identify the key knowledge gaps in areas including utilities, power generation, industry, and energy consumption. After a thorough search and evaluation for relevancy, 37 documents were identified. Moreover, we identified the visual analytics of PdM, including anomaly detection, planning/scheduling, exploratory data analysis (EDA), and explainable artificial intelligence (XAI). The findings revealed that anomaly detection was a major domain in PdM-related works. We conclude that most of the literature lacks depth in terms of an overall framework that combines data-driven and knowledge-driven techniques of PdM in the manufacturing industry. Some works that utilized both techniques indicated promising results, but there is insufficient research on involving maintenance personnel’s feedback in the latter stage of PdM architecture. Thus, there are still pertinent issues that need to be investigated, and limitations that need to be overcome before PdM is deployed with minimal human involvement. MDPI AG, Basel, Switzerland 2022-08-23 Article PeerReviewed Cheng, Xiang and Chaw, Jun Kit and Goh, Kam Meng and Ting, Tin Tin and Shafrida, Sahrani and Mohammad Nazir, Ahmad and Rabiah, Abdul Kadir and Ang, Mei Choo (2022) Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry. Sensors, 22 (6321). pp. 1-16. ISSN 1424-8220 https://www.mdpi.com/1424-8220/22/17/6321/pdf
spellingShingle Q Science (General)
QA75 Electronic computers. Computer science
QA76 Computer software
Cheng, Xiang
Chaw, Jun Kit
Goh, Kam Meng
Ting, Tin Tin
Shafrida, Sahrani
Mohammad Nazir, Ahmad
Rabiah, Abdul Kadir
Ang, Mei Choo
Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry
title Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry
title_full Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry
title_fullStr Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry
title_full_unstemmed Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry
title_short Systematic Literature Review on Visual Analytics of Predictive Maintenance in the Manufacturing Industry
title_sort systematic literature review on visual analytics of predictive maintenance in the manufacturing industry
topic Q Science (General)
QA75 Electronic computers. Computer science
QA76 Computer software
url http://eprints.intimal.edu.my/1713/
http://eprints.intimal.edu.my/1713/