Planning for legged-wheeled machines is typically done using trajectory optimization because of many degrees of freedom, thus rendering legged-wheeled planners prone to falling prey to bad local minima. We present a combined sampling and optimization-based planning approach that can cope with challenging terrain. The sampling-based stage computes whole-body configurations and contact schedule, which speeds up the optimization convergence. The optimization-based stage ensures that all the system constraints, such as non-holonomic rolling constraints, are satisfied. The evaluations show the importance of good initial guesses for optimization. Furthermore, they suggest that terrain/collision (avoidance) constraints are more challenging than the robot model's constraints. Lastly, we extend the optimization to handle general terrain representations in the form of elevation maps.
翻译:腿轮机规划通常使用轨迹优化方法进行,因为自由程度不同,从而使腿轮规划人员容易沦为当地劣质微型的牺牲品。我们提出了一个综合抽样和优化规划方法,可以应对具有挑战性的地形。基于取样的阶段计算了整个身体的配置和接触时间表,加快了优化的趋同。基于优化的阶段确保了所有系统制约因素都得到满足,如非血压滚动限制。评估显示初步的好猜测对于优化的重要性。此外,它们表明地形/曲线(避免)限制比机器人模型的限制更具挑战性。最后,我们扩大优化范围,以海拔地图的形式处理一般地形图。