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State Estimation Based on Sigma Point Kalman Filter for Suspension System in Presence of Road Excitation Influenced by Velocity of the Car

机译:基于Sigma点卡尔曼滤波器在悬架系统存在下基于Sigma Point Kalman滤波器的道路激励受到速度的影响

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The states of the suspension system including the road excitation depend on the road quality, the velocity of the car, and the sprung mass. Those states play a very important role in the control problem of stability, ride comfort, ride safety, and dynamic wheel load of the suspension systems. The velocities and deflections of the sprung mass and unsprung mass would not be measured fully in the practice. Therefore, it must be estimated by other measured quantities from the system such as acceleration and deflection of sprung mass and unsprung mass. To control the active suspension system, its states need to be estimated accurately and guaranteed the response time. This paper presents the method using the sigma point Kalman filter to estimate the suspension system’s states including the road excitation, the deflections, and the velocities of the sprung mass and unsprung mass. The mathematical model of the suspension system is rewritten for the state estimation problem, and the stochastic load profile is supposed the main noise input. The stochastic characteristic of the road excitation depending on the car’s velocity is taken into account in the model used for suspension system state estimation. The results calculated based on the practical experiment data for specific road profile with some particular velocities of the car show that the suspension system states are estimated quite accurately in comparison with the practice states.
机译:悬架系统的状态包括道路励磁依赖于道路质量,汽车的速度和簧上的质量。这些国家在悬架系统的稳定性,舒适,乘坐安全和动态轮载的控制问题中发挥着非常重要的作用。在实践中不会完全测量簧粒质量和簧下质量的速度和偏转。因此,必须由来自系统的其他测量量估计,例如弹簧质量和未填种的加速度和偏转。为了控制主动悬架系统,需要准确估计其各种状态并保证响应时间。本文介绍了使用Sigma点卡尔曼滤波器的方法来估计包括道路激发,偏转和簧盖质量的偏转和速度的悬架系统状态。悬架系统的数学模型被重写为状态估计问题,并且随机负载轮廓假设是主噪声输入。在用于悬架系统状态估计的模型中考虑了根据汽车速度的道路励磁的随机特征。基于特定路轮廓的实际实验数据计算的结果,具有车辆的一些特定速度,表明悬架系统状态与实践状态相比非常准确地估计。

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