Predictive maintenance is an ever-growing area of interest, spanning different fields and approaches. In the automotive industry faulty behaviors of the oxygen sensor are a key challenge to address. This paper presents OXYCLOG, a data-driven framework that, given a large number of time series collected from a vehicle's ECU (engine control unit), builds a model to predict if the oxygen sensor is currently unclogged, almost clogged (since the clogging of the sensor happens gradually), or clogged. OXYCLOG is characterized by a tailored preprocessing, which includes a custom and interpretable feature selection algorithm, along with a summarization strategy to transform a time-dependent problem into a time-independent one. Furthermore, a semi-supervised labeling methodology has been devised to use different data sources with different characteristics to define meaningful clogging labels. OXYCLOG integrates state-of-the-art classification algorithms - both interpretable and non-interpretable - to process real ECU data with good prediction performance.

Mining Sensor Data for Predictive Maintenance in the Automotive Industry

Cerquitelli, T;Neri, A;Tricarico, D;
2018-01-01

Abstract

Predictive maintenance is an ever-growing area of interest, spanning different fields and approaches. In the automotive industry faulty behaviors of the oxygen sensor are a key challenge to address. This paper presents OXYCLOG, a data-driven framework that, given a large number of time series collected from a vehicle's ECU (engine control unit), builds a model to predict if the oxygen sensor is currently unclogged, almost clogged (since the clogging of the sensor happens gradually), or clogged. OXYCLOG is characterized by a tailored preprocessing, which includes a custom and interpretable feature selection algorithm, along with a summarization strategy to transform a time-dependent problem into a time-independent one. Furthermore, a semi-supervised labeling methodology has been devised to use different data sources with different characteristics to define meaningful clogging labels. OXYCLOG integrates state-of-the-art classification algorithms - both interpretable and non-interpretable - to process real ECU data with good prediction performance.
2018
2018 IEEE 5th International Conference on Data Science and Advanced Analytics (DSAA)
Torino (Italy)
01-03 October 2018
2018 IEEE 5th International Conference on Data Science and Advanced Analytics (DSAA)
IEEE
351
360
978-1-5386-5090-5
Data-driven approach; classification algorithms; semi-supervised labeling; faulty behaviors of oxygen sensors
Giobergia, F; Baralis, E; Camuglia, M; Cerquitelli, T; Mellia, M; Neri, A; Tricarico, D; Tuninetti, A
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1876239
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