基于模型与数据融合的轮胎-路面摩擦系数估计

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引用次数: 0

摘要

轮胎与路面的相互作用产生车辆驱动力,影响车辆的最大加速度和稳定性等性能。序贯扩展卡尔曼滤波(S-EKF)与斜率法相结合已被用于轮胎-路面摩擦系数估计,但其自身存在局限性,此外还有几种“基于原因”和“基于效果”的方法。基于数据驱动的Kriging模型,利用现有的汽车传感器信号,提出了一种新的基于随机的评价准则。在不同的道路条件下,分别通过CarSimTM仿真和实验研究验证了所提出的估计方法。结果表明,该准则与路面摩擦系数具有较强的相关性,并提供了一种改进的轮胎-路面摩擦系数估计方法。为了提高估计的鲁棒性,提出了一种基于S-EKF和所提评估的信号融合估计方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tire-Road Friction Coefficient Estimation based on Fusion of Model- and Data-Based Methods
The tire-road interaction generates vehicle driving forces, which affect vehicle performance such as maximum acceleration and stability. Sequential extended Kalman filter (S-EKF) integrated with a slope method has been used for tire-road friction coefficient estimation with its own limitations, along with several “cause-based” and “effect-based” methods. This research proposes a new stochastic-based evaluation criterion using existing vehicle sensor signals with the help of data-driven Kriging model. The proposed estimation method is validated by both CarSimTM simulation and experimental studies, respectively, under different road conditions. The results shows that the proposed novel criterion has a strong correlation with the road friction coefficient and provides an improved tire-road friction coefficient estimation. A signal fusion estimation scheme based on both S-EKF and proposed evaluations is developed to improve estimation robustness.
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