English

Abnormal Road Surface Detection Using Wheel Sensor Data

Systems and Control 2022-09-20 v3 Numerical Analysis Systems and Control Numerical Analysis

Abstract

Intelligent tires can be used for a wide array of applications ranging from tire pressure monitoring to analyzing tire/road interactions, wheel loading, and tread wear monitoring. In this article, we develop a measurement system for intelligent tires equipped with a 3-D piezoresistive force sensor. The output of the sensor is segmented into tire revolution cycles, which are then represented by a transformation relying on adaptive Hermite functions. The underlying idea behind this step is to extract relevant features which capture tire dynamics. Then we evaluate the proposed measurement system in a potential vehicle application, that is, abnormal road surface detection. We deal with the corresponding binary classification problem by developing both low-complexity analytical and data-driven machine learning algorithms, which are tested on real-world measurement data. Our experiments showed that the proposed methods are able to detect abnormalities on the road surface with a mean accuracy of over 97%.

Keywords

Cite

@article{arxiv.2108.09162,
  title  = {Abnormal Road Surface Detection Using Wheel Sensor Data},
  author = {Tamás Dózsa and János Radó and János Volk and Ádám Kisari and Alexandros Soumelidis and Péter Kovács},
  journal= {arXiv preprint arXiv:2108.09162},
  year   = {2022}
}
R2 v1 2026-06-24T05:17:01.236Z