Multi-Fidelity Receding Horizon Planning for Multi-Contact Locomotion

Jiayi Wang, Sanghyun Kim, S. Vijayakumar, S. Tonneau
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引用次数: 6

Abstract

When traversing uneven terrain, humans consider their future steps for choosing the best location and timing of their current step. Likewise, when planning multi-contact motions for legged robots (e.g. humanoids), a ‘prediction horizon’ has to be considered. However, planning several steps ahead increases the dimensionality and non-linearity of an already challenging problem, which makes online planning intractable. We propose to reduce the problem complexity by using convex relaxations in the prediction horizon. We realize this idea within a Receding Horizon Planning (RHP) framework to plan dynamically consistent centroidal trajectories of humanoid walking on uneven terrain. This results in a novel formulation that combines an accurate non-convex model with a relaxed convex model, which we call RHP with multiple levels of model fidelity. We evaluate three candidate multi-fidelity RHPs with convex relaxations of the centroidal dynamics in the prediction horizon. The best candidate is 1.4x-3.0x (average 2.4x) faster than the traditional RHP that employs a single dynamics model over the entire look-ahead horizon. We also validate the resultant centroidal trajectories by tracking them with a whole-body inverse dynamics controller in simulation. Lastly, we find that incorporating angular dynamics in the prediction horizon is important to the success of multi-fidelity RHP.
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多接触运动的多保真度后退视界规划
当穿越不平坦的地形时,人类会考虑未来的步骤,以选择当前步骤的最佳位置和时机。同样,当规划有腿机器人(如类人机器人)的多接触运动时,必须考虑“预测视界”。然而,提前几步规划增加了本已具有挑战性的问题的维度和非线性,这使得在线规划变得棘手。我们提出在预测视界中使用凸松弛来降低问题的复杂性。我们在一个后退地平线规划(RHP)框架中实现了这一想法,以规划在不平坦地形上行走的动态一致质心轨迹。这就产生了一种新颖的公式,它结合了精确的非凸模型和松弛的凸模型,我们称之为具有多层模型保真度的RHP。我们评估了三个候选的具有质心动力学凸松弛的多保真度RHPs。最佳候选方案比传统的RHP快1.4 -3.0倍(平均2.4倍),传统RHP在整个前瞻范围内采用单一动态模型。我们还通过在仿真中使用全身逆动力学控制器跟踪它们来验证所得到的质心轨迹。最后,我们发现在预测视界中加入角动力学对多保真度RHP的成功至关重要。
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