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Motion Predicting of Autonomous Tracked Vehicles with Online Slip Model Identification

机译:在线滑动模型识别自主履带车辆的运动预测

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摘要

Precise understanding of the mobility is essential for high performance autonomous tracked vehicles in challenging circumstances, though the complex track/terrain interaction is difficult to model. A slip model based on the instantaneous centers of rotation (ICRs) of treads is presented and identified to predict the motion of the vehicle in a short term. Unlike many research studies estimating current ICRs locations using velocity measurements for feedback controllers, we focus on predicting the forward trajectories by estimating ICRs locations using position measurements. ICRs locations are parameterized over both tracks rolling speeds and the kinematic parameters are estimated in real time using an extended Kalman filter (EKF) without requiring prior knowledge of terrain parameters. Simulation results verify that the proposed algorithm performs better than the traditional method when the pose measuring frequencies are low. Experiments are conducted on a tracked vehicle with a weight of 13.6 tons. Results demonstrate that the predicted position and heading errors are reduced by about 75% and the reduction of pose errors is over 24% in the absence of the real-time kinematic global positioning system (RTK GPS).
机译:确切理解移动性对于在充满挑战环境中的高性能自主履带车辆的必要条件,尽管复杂的轨道/地形相互作用难以模拟。呈现并识别基于胎面瞬时旋转中心(ICR)的滑动模型以在短期内预测车辆的运动。与许多研究研究不同,使用对反馈控制器的速度测量估计当前ICRS位置,我们专注于通过使用位置测量估计ICRS位置来预测前向轨迹。 ICRS位置在两种轨道滚动速度上参数化,并且使用扩展的卡尔曼滤波器(EKF)实时估计运动参数,而无需先前了解地形参数。仿真结果验证所提出的算法在姿势测量频率低时比传统方法更好。实验在履带式车辆上进行,重量为13.6吨。结果表明,在没有实时运动全球定位系统(RTK GPS)的情况下,预测位置和前置误差减少了大约75%,并且姿势误差的降低超过24%。

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