Please use this identifier to cite or link to this item: https://hdl.handle.net/10316/113888
Title: Online Monitoring of Sensor Calibration Status to Support Condition-Based Maintenance
Authors: Martins, Alexandre
Fonseca, Inácio 
Farinha, José Torres 
Reis, João
Cardoso, António J. Marques
Keywords: sensors; calibration; condition-based maintenance; online calibration status; HMM; K-means; PCA
Issue Date: 21-Feb-2023
Publisher: MDPI
Project: European Union’s Horizon 2020 research and innovation programme under the Marie Sklodowvska-Curie grant agreement 871284, project SSHARE; 
POCI-01-0145-FEDER-029494 
PTDC/EEI-EEE/29494/2017 
UIDB/04131/2020 
UIDP/04131/2020 
Serial title, monograph or event: Sensors
Volume: 23
Issue: 5
Abstract: Condition-Based Maintenance (CBM), based on sensors, can only be reliable if the data used to extract information are also reliable. Industrial metrology plays a major role in ensuring the quality of the data collected by the sensors. To guarantee that the values collected by the sensors are reliable, it is necessary to have metrological traceability made by successive calibrations from higher standards to the sensors used in the factories. To ensure the reliability of the data, a calibration strategy must be put in place. Usually, sensors are only calibrated on a periodic basis; so, they often go for calibration without it being necessary or collect data inaccurately. In addition, the sensors are checked often, increasing the need for manpower, and sensor errors are frequently overlooked when the redundant sensor has a drift in the same direction. It is necessary to acquire a calibration strategy based on the sensor condition. Through online monitoring of sensor calibration status (OLM), it is possible to perform calibrations only when it is really necessary. To reach this end, this paper aims to provide a strategy to classify the health status of the production equipment and of the reading equipment that uses the same dataset. A measurement signal from four sensors was simulated, for which Artificial Intelligence and Machine Learning with unsupervised algorithms were used. This paper demonstrates how, through the same dataset, it is possible to obtain distinct information. Because of this, we have a very important feature creation process, followed by Principal Component Analysis (PCA), K-means clustering, and classification based on Hidden Markov Models (HMM). Through three hidden states of the HMM, which represent the health states of the production equipment, we will first detect, through correlations, the features of its status. After that, an HMM filter is used to eliminate those errors from the original signal. Next, an equal methodology is conducted for each sensor individually and using statistical features in the time domain where we can obtain, through HMM, the failures of each sensor.
URI: https://hdl.handle.net/10316/113888
ISSN: 1424-8220
DOI: 10.3390/s23052402
Rights: openAccess
Appears in Collections:I&D CEMMPRE - Artigos em Revistas Internacionais

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