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Calculation Algorithm of Tire-Road Friction Coefficient Based on Limited-Memory Adaptive Extended Kalman Filter

机译:基于有限记忆自适应扩展卡尔曼滤波器的轮胎道路摩擦系数计算算法

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摘要

In this paper, a limited-memory adaptive extended Kalman Filter (LM-AEKF) to estimate tire-road friction coefficient is proposed. By combining extended Kalman filter (EKF) with the limited-memory filter, this algorithm can reduce the effects of old measurement data on filtering and improve the estimation accuracy. Self-adaptive regulatory factors were introduced to weigh covariance matrix of evaluated error. Meanwhile, measured noise covariance matrix was adjusted dynamically by fuzzy inference to accurately track the breaking status of system. Therefore, problems, including large filter error and divergence caused by incorrect model, can be solved. Joint simulation was conducted for the proposed algorithm with Carsim and Matlab/Simulink. Under the different road conditions, real-vehicle road tests were conducted in various working conditions for contrast with traditional EKF results. Simulation and real-vehicle road tests show that this algorithm can enhance the filter stability, improve the estimation accuracy of algorithm, and increase algorithm robustness.
机译:本文提出了一种有限的存储器自适应扩展卡尔曼滤波器(LM-AEKF)来估计轮胎道路摩擦系数。通过将扩展的卡尔曼滤波器(EKF)与有限内存过滤器组合,该算法可以减少旧测量数据对滤波的影响,提高估计精度。引入自适应调节因素以称量评估误差的协方差矩阵。同时,通过模糊推理动态调整测量的噪声协方差矩阵,以准确跟踪系统的断开状态。因此,可以解决问题,包括大型滤波器误差和由不正确的模型引起的发散。用Carsim和Matlab / Simulink的建议算法进行了联合仿真。在不同的道路条件下,在各种工作条件下进行真正的车辆道路测试,以与传统的EKF结果对比。仿真和现实车辆道路测试表明,该算法可以提高滤波器稳定性,提高算法的估计精度,提高算法鲁棒性。

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