Estimating road profiles in quarter car model using two methods

Q4 Engineering
MingZhe Gong, Dong-Cherng Lin, Chang Der Lee
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引用次数: 0

Abstract

Vehicle controllability analysis on real roads can be obtained only if valid road profile and tyre road friction model are known. This work determines the time-vary road profiles, called inputs, in a nonlinear system using two input estimation methods. Both algorithms use the extended Kalman filter (EKF) with two different recursive estimators to determine inputs and states. Based on the two regression equations, a recursive least-squares estimator is used with a tuneable fading factor called a conventional input estimation (CIE) and an adaptive weighting fading factor called an adaptive weighting input estimation (AWIE). Numerical simulations of a nonlinear system, quarter car model, demonstrate the accuracy of the proposed methods. Simulation results show that proposed methods accurately estimate road profiles, tyre forces, and states, and the AWIE approach has superior robust estimation capability to the CIE method in the nonlinear system. The simulation results are the same with the single degree of freedom.
用两种方法估计四分之一汽车模型的道路轮廓
只有知道有效的道路轮廓和轮胎-道路摩擦模型,才能在真实道路上进行车辆可控性分析。这项工作使用两种输入估计方法确定了非线性系统中随时间变化的道路轮廓,称为输入。这两种算法都使用具有两个不同递归估计器的扩展卡尔曼滤波器(EKF)来确定输入和状态。基于这两个回归方程,递归最小二乘估计器与称为传统输入估计(CIE)的可调谐衰落因子和称为自适应加权输入估计(AWIE)的自适应加权衰落因子一起使用。对非线性系统四分之一汽车模型的数值模拟表明了所提出方法的准确性。仿真结果表明,所提出的方法准确地估计了道路轮廓、轮胎力和状态,并且在非线性系统中,AWIE方法具有优于CIE方法的鲁棒估计能力。仿真结果与单自由度相同。
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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
3
期刊介绍: IJVSMT provides a resource of information for the scientific and engineering community working with ground vehicles. Emphases are placed on novel computational and testing techniques that are used by automotive engineers and scientists.
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