4.5 Article

Huber-Based Robust Unscented Kalman Filter Distributed Drive Electric Vehicle State Observation

期刊

ENERGIES
卷 14, 期 3, 页码 -

出版社

MDPI
DOI: 10.3390/en14030750

关键词

distributed drive; Huber method; unscented Kalman filter; state estimate

资金

  1. National Natural Science Foundation of China [61663042]

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In order to improve the accuracy of state parameter estimation for distributed drive electric vehicles, a robust unscented Kalman filter algorithm combined with the Huber method was proposed in this study. The vehicle state parameter observer was designed and real-time correction of measured noise and state covariance was implemented to achieve high observation accuracy.
Accurate and real-time acquisition of vehicle state parameters is key to improving the performance of vehicle control systems. To improve the accuracy of state parameter estimation for distributed drive electric vehicles, an unscented Kalman filter (UKF) algorithm combined with the Huber method is proposed. In this paper, we introduce the nonlinear modified Dugoff tire model, build a nonlinear three-degrees-of-freedom time-varying parametric vehicle dynamics model, and extend the vehicle mass, the height of the center of gravity, and the yaw moment of inertia, which are significantly influenced by the driving state, into the vehicle state vector. The vehicle state parameter observer was designed using an unscented Kalman filter framework. The Huber cost function was introduced to correct the measured noise and state covariance in real-time to improve the robustness of the observer. The simulation verification of a double-lane change and straight-line driving conditions at constant speed was carried out using the Simulink/Carsim platform. The results show that observation using the Huber-based robust unscented Kalman filter (HRUKF) more realistically reflects the vehicle state in real-time, effectively suppresses the influence of abnormal error and noise, and obtains high observation accuracy.

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