A reliability inspired strategy for intelligent performance management with predictive driver behaviour: A case study for a diesel particulate filter

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Abstract

The increase availability of operational data from the fleets of cars in the field offers opportunities to deploy machine learning to identify patterns of driver behaviour. This provides contextual intelligence insight that can be used to design strategies for online optimisation of the vehicle performance, including compliance with stringent legislation. This paper illustrates this approach with a case study for a Diesel Particulate Filter, where machine learning deployed to real world automotive data is used in conjunction with a reliability inspired performance modelling paradigm to design a strategy to enhance operational performance based on predictive driver behaviour. The model-in-the-loop simulation of the proposed strategy on a fleet of vehicles showed significant improvement compared to the base strategy, demonstrating the value of the approach.

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APA

Doikin, A., Campean, F., Priest, M., Lin, C., & Angiolini, E. (2021). A reliability inspired strategy for intelligent performance management with predictive driver behaviour: A case study for a diesel particulate filter. In Proceedings of the Design Society (Vol. 1, pp. 191–200). Cambridge University Press. https://doi.org/10.1017/pds.2021.20

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