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High gain and sliding mode adaptive observers comparison: estimation of tire rolling resistance

机译:高增益和滑模自适应观测器比较:轮胎滚动阻力估计

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This paper deals with the identification of suitable observation technique for estimation of the rolling resistance of a tire. Two nonlinear observers were applied in order to get a robust and accurate estimation of rolling resistance force. In this paper, a quarter car model is used and the adaptive high gain and the adaptive second order sliding mode (SOSML) techniques are compared. Their advantages and disadvantages have allowed choosing the most effective solution with respect to accuracy, robustness and computing complexity. The first simulation results of estimation of rolling resistance showed efficiency and precision of these two types of observers with a relative mean error less than 5 %. Their robustness to modelling error, parameter uncertainty and input noise was evaluated and used to detect the variation in the input. So, the convergence study has shown that the two observers ensure an asymptotic convergence toward zero error and that the adaptive high gain observer is faster than adaptive SOSML by 2 sec. Finally, simulation validation is carried out with software MATLAB/Simulink and SCANeRTM Studio (vehicle dynamic software). This brief paper presented the very first results of an original estimation of rolling resistance using adaptive gain observers.
机译:本文探讨了用于估计轮胎滚动阻力的合适观察技术的确定。为了获得鲁棒和准确的滚动阻力估算,应用了两个非线性观测器。本文使用四分之一汽车模型,并比较了自适应高增益和自适应二阶滑模(SOSML)技术。它们的优点和缺点允许选择关于准确性,鲁棒性和计算复杂性的最有效解决方案。估算滚动阻力的第一个模拟结果显示了这两种类型的观测器的效率和精度,相对平均误差小于5%。他们对建模误差,参数不确定性和输入噪声的鲁棒性进行了评估,并用于检测输入中的变化。因此,收敛研究表明,这两个观测器确保了向零误差的渐近收敛,并且自适应高增益观测器比自适应SOSML快2秒钟。最后,使用软件MATLAB / Simulink和SCANeR \ n TM\n Studio(车辆动态软件)。这篇简短的论文介绍了使用自适应增益观测器对滚动阻力进行原始估算的最初结果。

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