论文标题
通过车辆振动测量和立方体卡尔曼过滤的地形估计
Terrain estimation via vehicle vibration measurement and cubature Kalman filtering
论文作者
论文摘要
在自然地形上行驶的车辆经历的振动程度定义了其骑行质量。通常,从单个不连续性到高程轮廓的随机变化,表面不规则性充当激发的主要来源,可以通过轮胎土壤相互作用和悬架系统引起车身的振动。因此,越野车的乘车响应与地面特性密切相关。这项研究的目的是开发一个基于模型的观察者,该观察者使用可用的板载传感器自动估算地形参数。两个加速信号,一个来自车身,一个来自车轮悬架的信号被送入动态车辆模型,该模型考虑了轮胎/地形相互作用以估计地面性能。为了解决所得的非线性同时状态和参数估计问题,使用了Cubatory Kalman滤波器,该滤波器显示出在准确性和稳定性方面表现出优于标准的扩展Kalman滤波器。提出了一组大量的仿真测试,以评估在各种表面粗糙度和可变形条件下提出的估计量的性能。结果表明,拟议的观察者在操作过程中可以自动估算地形特性的潜力,该操作可以在一般智能汽车家族的船上实施,范围从越野高速乘用车到轻质和低速行星漫游器。
The extent of vibrations experienced by a vehicle driving over natural terrain defines its ride quality. Generally, surface irregularities, ranging from single discontinuities to random variations of the elevation profile, act as a major source of excitation that induces vibrations in the vehicle body through the tire-soil interaction and suspension system. Therefore, the ride response of off-road vehicles is tightly connected with the ground properties. The objective of this research is to develop a model-based observer that estimates automatically terrain parameters using available onboard sensors. Two acceleration signals, one coming from the vehicle body and one from the wheel suspension, are fed into a dynamic vehicle model that takes into account tire/terrain interaction to estimate ground properties. To solve the resulting nonlinear simultaneous state and parameter estimation problem, the cubature Kalman filter is used, which is shown to outperform the standard extended Kalman filter in terms of accuracy and stability. An extensive set of simulation tests is presented to assess the performance of the proposed estimator under various surface roughness and deformability conditions. Results show the potential of the proposed observer to estimate automatically terrain properties during operations that could be implemented onboard of a general family of intelligent vehicles, ranging from off-road high-speed passenger cars to lightweight and low-speed planetary rovers.