Affiliation:
1. Jilin University, ASCL, China Jilin University, Chongqing Research Institute, China
2. University of Birmingham, School of Engineering, UK
Abstract
<div>To address the challenge of directly measuring essential dynamic parameters of
vehicles, this article introduces a multi-source information fusion estimation
method. Using the intelligent front camera (IFC) sensor to analyze lane line
polynomial information and a kinematic model, the vehicle’s lateral velocity and
sideslip angle can be determined without extra sensor expenses. After evaluating
the strengths and weaknesses of the two aforementioned lateral velocity
estimation techniques, a fusion estimation approach for lateral velocity is
proposed. This approach extracts the vehicle’s lateral dynamic characteristics
to calculate the fusion allocation coefficient. Subsequently, the outcomes from
the two lateral velocity estimation techniques are merged, ensuring rapid
convergence under steady-state conditions and precise tracking in dynamic
scenarios. In addition, we introduce a tire parameter online adaptive module
(TPOAM) to continually update essential tire parameters such as cornering
stiffnesses, with its effectiveness demonstrated through DLC and slalom
simulation tests. Using a dual extended Kalman filter (DEKF) observer, the
article allows for joint estimation of vehicle states and tire parameters.
Ultimately, we offer a cost-effective estimation method of vital dynamic vehicle
parameters to support the motion control module in autonomous driving.</div>
Cited by
3 articles.
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