IEEE Open Journal of Vehicular Technology (Jan 2024)

Enhancing Wheel Vertical Displacement Estimation in Road Vehicles Through Integration of Model-Based Estimator With Artificial Intelligence

  • Raffaele Marotta,
  • Sebastiaan van Aalst,
  • Kylian Praet,
  • Miguel Dhaens,
  • Valentin Ivanov,
  • Salvatore Strano,
  • Mario Terzo,
  • Ciro Tordela

DOI
https://doi.org/10.1109/OJVT.2024.3431449
Journal volume & issue
Vol. 5
pp. 979 – 989

Abstract

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In the automotive industry, the accurate estimation of wheel displacements is crucial for optimizing vehicle suspension systems. Traditional model-based approaches often face challenges in accurately predicting these displacements due to the complex dynamics of the road-vehicle interaction. To address this limitation, this study, conducted in the frame of the OWHEEL project, proposes the integration of a multi-output neural network capable of compensating for estimation errors inherent in model-based approaches, specifically those arising from road inputs. Leveraging only vertical acceleration measurements, the neural network operates in parallel with the model-based estimator, enhancing the overall accuracy of displacement estimation. Experimental validation using a sports vehicle demonstrates the efficacy of the proposed methodology, showcasing its ability to improve estimation accuracy beyond the capabilities of the model-based approach alone.

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