【24h】

Motion planning for steep hill climbing

机译:陡峭山坡运动计划

获取原文

摘要

The motors or engines of an autonomous ground vehicles (AGV) have torque and power limitations, which limit their abilities to climb steep hills, which are defined to be hills that have high grade sections in which the vehicle is forced to decelerate. Traversal of a steep hill requires the vehicle to have sufficient momentum before entering the hill. This problem is part of a larger class of momentum-based motion planning problems such as the problem of lifting heavy objects with manipulators. Hence, solutions to the steep hill climbing problem have much wider applicability. The motion planning here is accomplished using a dynamic model of the skid-steered AGV used in the experiments along with Sampling Based Model Predictive Control (SBMPC), a recently developed input sampling planning algorithm that may be viewed as a generalization of LPA* to the direct use of kinodynamic models. The motion planning is demonstrated experimentally using two scenarios, one in which the robot starts at rest at the bottom of a hill and one in which the robot starts at rest a distance from the hill. The first scenario requires the AGV to first reverse direction so that the vehicle can gather enough momentum before reaching the hill. This corresponds to having the vehicle begin at a local minimum, which results in a problem that many traditional model predictive control methods cannot solve. It is seen that, whereas open loop trajectories can lead to vehicle immobilization, SBMPC successfully uses the information provided by the dynamic model to ensure that the AGV has the requisite momentum.
机译:自主地面车辆(AGV)的电动机或发动机具有扭矩和功率限制,这限制了它们爬坡的能力,陡坡被定义为具有高坡度区域的山丘,车辆必须在其中减速。穿越陡峭的山丘要求车辆在进入山丘之前具有足够的动量。此问题是一类基于动量的运动计划问题的一部分,例如使用机械手举起重物的问题。因此,解决陡坡攀爬问题的解决方案具有更广泛的适用性。此处的运动计划是使用实验中使用的滑移式AGV的动态模型以及基于采样的模型预测控制(SBMPC)来完成的,该模型是最近开发的输入采样计划算法,可以看作是LPA *的通用化。直接使用运动学模型。使用两种方案通过实验演示了运动计划,其中一种方案是机器人在山坡底部静止启动,另一种方案是机器人在距山丘一定距离处静止启动。第一种情况要求AGV首先反向,以便车辆可以在到达山坡之前收集足够的动量。这对应于使车辆从局部最小值开始,这导致许多传统模型预测控制方法无法解决的问题。可以看出,尽管开环轨迹可能导致车辆固定,但SBMPC成功地使用了动态模型提供的信息来确保AGV具有所需的动量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号