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Title: Forecasting appliances failures: a machine-learning approach to predictive maintenance
Author: Fernandes, Sofia
Antunes, Mário
Santiago, Ana Rita
Barraca, João Paulo
Gomes, Diogo
Aguiar, Rui L.
Keywords: Big data applications
Big data services
Data processing
Data analysis
Predictive maintenance
Machine learning
Issue Date: 14-Apr-2020
Publisher: MDPI
Abstract: Heating appliances consume approximately 48% of the energy spent on household appliances every year. Furthermore, a malfunctioning device can increase the cost even further. Thus, there is a need to create methods that can identify the equipment’s malfunctions and eventual failures before they occur. This is only possible with a combination of data acquisition, analysis and prediction/forecast. This paper presents an infrastructure that supports the previously mentioned capabilities and was deployed for failure detection in boilers, making possible to forecast faults and errors. We also present our initial predictive maintenance models based on the collected data.
Peer review: yes
DOI: 10.3390/info11040208
Appears in Collections:DETI - Artigos
IT - Artigos

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