Vehicle State Estimation Based on Unscented Kalman Filtering and a Genetic Algorithm

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Authors Abstract
Content
A critical component of vehicle dynamic control systems is the accurate and real-time knowledge of the vehicle’s key states and parameters when running on the road. Such knowledge is also essential for vehicle closed-loop feedback control. Vehicle state and parameter estimation has gradually become an important way to soft-sense some variables that are difficult to measure directly using general sensors. In this work, a seven degrees-of-freedom (7-DOF) nonlinear vehicle dynamics model is established, where consideration of the Magic formula tire model allows us to estimate several vehicle key states using a hybrid algorithm containing an unscented Kalman filter (UKF) and a genetic algorithm (GA). An estimator based on the hybrid algorithm is compared with an estimator based on just a UKF. The results show that the proposed estimator has higher accuracy and fewer computation requirements than the UKF estimator. The results of a real-vehicle experiment demonstrate that the proposed hybrid algorithm can be used effectively for solving the vehicle-state estimation problem.
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DOI
https://doi.org/10.4271/02-14-01-0002
Pages
22
Citation
Liu, Y., and Dou, C., "Vehicle State Estimation Based on Unscented Kalman Filtering and a Genetic Algorithm," Commercial Vehicles 14(1):23-37, 2021, https://doi.org/10.4271/02-14-01-0002.
Additional Details
Publisher
Published
Sep 22, 2020
Product Code
02-14-01-0002
Content Type
Journal Article
Language
English