Intelligent predictive maintenance for fault diagnosis and prognosis in machine centers: Industry 4.0 scenario

Zhe Li , Yi Wang , Ke-Sheng Wang

Advances in Manufacturing ›› 2017, Vol. 5 ›› Issue (4) : 377 -387.

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Advances in Manufacturing ›› 2017, Vol. 5 ›› Issue (4) : 377 -387. DOI: 10.1007/s40436-017-0203-8
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Intelligent predictive maintenance for fault diagnosis and prognosis in machine centers: Industry 4.0 scenario

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Abstract

Fault diagnosis and prognosis in mechanical systems have been researched and developed in the last few decades at a very rapid rate. However, owing to the high complexity of machine centers, research on improving the accuracy and reliability of fault diagnosis and prognosis via data mining remains a prominent issue in this field. This study investigates fault diagnosis and prognosis in machine centers based on data mining approaches to formulate a systematic approach and obtain knowledge for predictive maintenance in Industry 4.0 era. We introduce a system framework based on Industry 4.0 concepts, which includes the process of fault analysis and treatment for predictive maintenance in machine centers. The framework includes five modules: sensor selection and data acquisition module, data preprocessing module, data mining module, decision support module, and maintenance implementation module. Furthermore, a case study is presented to illustrate the application of the data mining methods for fault diagnosis and prognosis in machine centers as an Industry 4.0 scenario.

Keywords

Data mining (DM) / Machine centers / Predictive maintenance / Industry 4.0

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Zhe Li, Yi Wang, Ke-Sheng Wang. Intelligent predictive maintenance for fault diagnosis and prognosis in machine centers: Industry 4.0 scenario. Advances in Manufacturing, 2017, 5(4): 377-387 DOI:10.1007/s40436-017-0203-8

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