Road roughness estimation based on discrete Kalman filter with unknown input

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77

초록

The road roughness acts as a disturbance input to the vehicle dynamics, and causes undesirable vibrations associated with the ride and handing characteristics. Furthermore, the accurate measurement of road roughness plays a key role in better understanding a vehicle dynamic behaviour and active suspension control systems. However, the direct measurement by laser profilometer or other distance sensors are not trivial due to technical and economic issues. This study proposes a new road roughness estimation method by using the discrete Kalman filter with unknown input (DKF-UI). This algorithm is built on a quarter-car model and uses the measurements of the wheel stroke (suspension deflection), and the acceleration of the sprung mass and unsprung mass. The estimation results are compared to the measurements by laser profilometer in-vehicle test.

키워드

Kalman filterunknown inputquarter-car suspension modelroad roughness estimationSUSPENSIONVARIABILITY
제목
Road roughness estimation based on discrete Kalman filter with unknown input
저자
Kang, Sun-WooKim, Jung-SikKim, Gi-Woo
DOI
10.1080/00423114.2018.1524151
발행일
2019-10-03
유형
Article
저널명
Vehicle System Dynamics
57
10
페이지
1530 ~ 1544