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Vehicle State Estimation Based on Sage–Husa Adaptive Unscented Kalman Filtering

Yong Chen, Hao Yan, Yuecheng Li

2023World Electric Vehicle Journal14 citationsDOIOpen Access PDF

Abstract

To combat the impacts of uncertain noise on the estimation of vehicle state parameters and the high cost of sensors, a state-observer design with an adaptive unscented Kalman filter (AUKF) is developed. The design equation of the state observer is derived by establishing the vehicle’s three degrees-of-freedom (DOF) model. On this basis, the Sage–Husa algorithm and unscented Kalman filter (UKF) are combined to form the AUKF algorithm to adaptively update the statistical feature estimation of measurement noise. Finally, a co-simulation using Carsim and Matlab/Simulink confirms the algorithm is effective and reasonable. The simulation results demonstrate that the proposed algorithm, compared with the UKF algorithm, increases estimation accuracy by 19.13%, 32.8%, and 39.46% in yaw rate, side-slip angle, and longitudinal velocity, respectively. This is because the proposed algorithm adaptively adjusts the measurement noise covariance matrix, which can estimate the state parameters of the vehicle more accurately.

Topics & Concepts

CarSimKalman filterControl theory (sociology)Observer (physics)MATLABExtended Kalman filterComputer scienceUnscented transformYawCovarianceCovariance matrixCovariance intersectionFast Kalman filterAlgorithmEngineeringMathematicsArtificial intelligenceAutomotive engineeringStatisticsPhysicsOperating systemQuantum mechanicsControl (management)Vehicle Dynamics and Control SystemsHydraulic and Pneumatic SystemsVehicle Noise and Vibration Control
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