Publications:Interactive feature extraction for diagnostic trouble codes in predictive maintenance : A case study from automotive domain

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Title Interactive feature extraction for diagnostic trouble codes in predictive maintenance : A case study from automotive domain
Author
Year 2019
PublicationType Conference Paper
Journal
HostPublication Proceedings of the Workshop on Interactive Data Mining
Conference WSDM 2019: The 12th ACM International Conference on Web Search and Data Mining, Melbourne, VIC, Australia, 11-15 February, 2019
DOI http://dx.doi.org/10.1145/3304079.3310288
Diva url http://hh.diva-portal.org/smash/record.jsf?searchId=1&pid=diva2:1335754
Abstract

Predicting future maintenance needs of equipment can be addressed in a variety of ways. Methods based on machine learning approaches provide an interesting platform for mining large data sets to find patterns that might correlate with a given fault. In this paper, we approach predictive maintenance as a classification problem and use Random Forest to separate data readouts within a particular time window into those corresponding to faulty and non-faulty component categories. We utilize diagnostic trouble codes (DTCs) as an example of event-based data, and propose four categories of features that can be derived from DTCs as a predictive maintenance framework. We test the approach using large-scale data from a fleet of heavy duty trucks, and show that DTCs can be used within our framework as indicators of imminent failures in different components.