Integrated state and parameter estimation for vehicle dynamics control

Kanwar Bharat Singh, S. Taheri
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引用次数: 2

Abstract

Most modern day automotive chassis control systems employ a feedback control structure. Therefore, a real-time estimate of the vehicle handling dynamic states and tyre-road contact parameters are invaluable for enhancing the performance of current vehicle control systems, such as anti-lock brake system (ABS) and electronic stability program (ESP). Today's production cars are equipped with onboard sensors (e.g., a 3-axis accelerometer, 3-axis gyroscope, steering wheel angle sensor, and wheel speed sensors) which when used in conjunction with certain model based observers can be used to identify relevant vehicle states for optimal control of comfort, stability and handling. However, some key variables such as the tyre forces, road bank/grade angles, and the tyre-road friction coefficient, which have a significant impact on vehicle handling performance and safety are difficult to measure using sensors already onboard vehicles. This paper introduces an integrated vehicle state estimator comprising a series of model-based and kinematic-based observers for estimating these unmeasurable states. Using an appropriate vehicle model, kinematic equations of motion and vehicle sensor data, the unknown vehicle states as well as the tyre-road contact forces are estimated by implementing a series of observers arranged in a cascade structure. Key estimated signals include the vehicle side slip angle (β), tyre longitudinal/lateral/vertical forces, and the tyre-road friction coefficient (μ). The performance of the proposed estimators has been evaluated via computer simulations conducted using the vehicle dynamics software CarSim®. An effectively designed merging scheme ensures robust estimation performance even during the vehicle manoeuvres which show highly nonlinear tyre characteristics and in the existence of road inclination or bank angle.
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车辆动力学控制的状态与参数综合估计
大多数现代汽车底盘控制系统采用反馈控制结构。因此,实时估计车辆操纵动态状态和轮胎-路面接触参数对于提高当前车辆控制系统(如防抱死制动系统(ABS)和电子稳定程序(ESP))的性能具有不可估量的价值。如今的量产车都配备了车载传感器(如3轴加速度计、3轴陀螺仪、方向盘角度传感器和轮速传感器),当这些传感器与某些基于模型的观察者一起使用时,可以用来识别相关的车辆状态,以实现舒适性、稳定性和操控性的最佳控制。然而,一些关键变量,如轮胎力、道路倾斜角度和轮胎-道路摩擦系数,对车辆的操纵性能和安全性有重大影响,很难使用车载传感器来测量。本文介绍了一种由一系列基于模型和基于运动的观测器组成的综合车辆状态估计器,用于估计这些不可测状态。利用适当的车辆模型、运动方程和车辆传感器数据,通过在串级结构中实现一系列观测器来估计未知的车辆状态以及轮胎与路面的接触力。主要估计信号包括车辆侧滑角(β)、轮胎纵向/横向/垂直作用力和轮胎路面摩擦系数(μ)。所提出的估计器的性能已通过使用车辆动力学软件CarSim®进行的计算机模拟进行了评估。设计了一种有效的合并方案,即使在轮胎高度非线性的车辆运动和存在道路倾斜或倾斜角的情况下,也能保证估计的鲁棒性。
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来源期刊
International Journal of Vehicle Performance
International Journal of Vehicle Performance Engineering-Safety, Risk, Reliability and Quality
CiteScore
2.20
自引率
0.00%
发文量
30
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