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Estimating vehicle-terrain interaction parameters from tracked-robot sensor data

机译:从跟踪机器人传感器数据估算车辆地形交互参数

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With a wider range of robotic vehicle being deployed with either semi- or full autonomous control, the need to provide useful information about the operational terrain remains essential for reliable operation. In particular, small-scale tracked robotic vehicles are especially found to have widely varying behavior when operating on uncertain and highly variable soil properties. It can be helpful to have information about specific vehicle-terrain parameters that influence traction and resistance to mobility. This paper describes an approach for estimating such terrain parameters (i.e., soil cohesion, shearing resistance, and shear modulus) online, particularly for deformable terrain. By combining an Extended Kalman Filter (EKF) and Newton-Raphson techniques, soil parameters can be estimated using onboard sensor data. Preliminary results from field testing on sandy and clay-like soil terrains show the ability to distinguish between these terrains. These results show promise for implementing online and real-time methods that can inform and guide planning and traction control algorithms.
机译:通过使用半或完全自主控制部署的更广泛的机器人车辆,需要提供有关操作地形的有用信息的需要对可靠操作来说至关重要。特别地,在在不确定和高度可变的土壤性质上运行时,特别发现小型追踪的机器人车辆具有广泛变化的行为。拥有有关有关影响牵引力和抵抗移动性的特定车辆地形参数的信息可以有所帮助。本文介绍了一种用于估计这种地形参数(即土壤凝聚力,剪切抗性和剪切模量)在线估算的方法,特别是对于可变形地形。通过组合扩展的卡尔曼滤波器(EKF)和牛顿Raphson技术,可以使用车载传感器数据估计土壤参数。砂质和粘土状土地带的现场测试的初步结果表明了区分这些地形的能力。这些结果表明,实施可以通知和指导规划和牵引力控制算法的在线和实时方法。

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