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GENERATIVE LEARNING FOR SIMULATION OF VEHICLE FAULTS

Publication ,  Conference
Kuiper, P; Lin, S; Blanchet, J; Tarokh, V
Published in: Proceedings - Winter Simulation Conference
January 1, 2024

We develop a novel generative model to simulate vehicle health and forecast faults, conditioned on practical operational considerations. The model, trained on data from the US Army’s Predictive Logistics program, aims to support predictive maintenance. It forecasts faults far enough in advance to execute a maintenance intervention before a breakdown occurs. The model incorporates real-world factors that affect vehicle health. It also allows us to understand the vehicle’s condition by analyzing operating data, and characterizing each vehicle into discrete states. Importantly, the model predicts the time to first fault with high accuracy. We compare its performance to other models and demonstrate its successful training.

Duke Scholars

Published In

Proceedings - Winter Simulation Conference

DOI

ISSN

0891-7736

Publication Date

January 1, 2024

Start / End Page

2106 / 2117
 

Citation

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Kuiper, P., Lin, S., Blanchet, J., & Tarokh, V. (2024). GENERATIVE LEARNING FOR SIMULATION OF VEHICLE FAULTS. In Proceedings - Winter Simulation Conference (pp. 2106–2117). https://doi.org/10.1109/WSC63780.2024.10838724
Kuiper, P., S. Lin, J. Blanchet, and V. Tarokh. “GENERATIVE LEARNING FOR SIMULATION OF VEHICLE FAULTS.” In Proceedings - Winter Simulation Conference, 2106–17, 2024. https://doi.org/10.1109/WSC63780.2024.10838724.
Kuiper P, Lin S, Blanchet J, Tarokh V. GENERATIVE LEARNING FOR SIMULATION OF VEHICLE FAULTS. In: Proceedings - Winter Simulation Conference. 2024. p. 2106–17.
Kuiper, P., et al. “GENERATIVE LEARNING FOR SIMULATION OF VEHICLE FAULTS.” Proceedings - Winter Simulation Conference, 2024, pp. 2106–17. Scopus, doi:10.1109/WSC63780.2024.10838724.
Kuiper P, Lin S, Blanchet J, Tarokh V. GENERATIVE LEARNING FOR SIMULATION OF VEHICLE FAULTS. Proceedings - Winter Simulation Conference. 2024. p. 2106–2117.

Published In

Proceedings - Winter Simulation Conference

DOI

ISSN

0891-7736

Publication Date

January 1, 2024

Start / End Page

2106 / 2117