Avoiding Dynamic Obstacles with Real-time Motion Planning using Quadratic Programming for Varied Locomotion Modes

J. White, D. Jay, Tianze Wang, Christian M. Hubicki
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引用次数: 1

Abstract

We present a real-time motion planner that avoids multiple moving obstacles without knowing their dynamics or intentions. This method uses convex optimization to generate trajectories for linear plant models over a planning horizon (i.e. model-predictive control). While convex optimizations allow for fast planning, obstacle avoidance can be challenging to incorporate because Euclidean distance calculations tend to break convexity. By using a half-space convex relaxation, our planner reasons about an approximated distance-to-obstacle measure that is linear in its decision variables and preserves convexity. Further, by iteratively updating the relaxation over the planning horizon, the half-space approximation is improved, enabling nimble avoidance maneuvers. We further augment avoidance performance with a soft penalty slack-variable for-mulation that introduces a piecewise quadratic cost. As a proof of concept, we demonstrate the planner on double-integrator models in both single-agent and multi-agent tasks-avoiding multiple obstacles and other agents in 2D and 3D environments. We show extensions to legged locomotion by bipedally walking around obstacles in simulation using the Linear Inverted Pendulum Model (LIPM). We then present two sets of hardware experiments showing real-time obstacle avoid-ance with quadcopter drones: (1) avoiding a 10m/s swinging pendulum and (2) dodging a chasing drone.
基于二次规划的动态避障实时运动规划
我们提出了一个实时运动规划,避免多个移动障碍,而不知道他们的动态或意图。该方法使用凸优化来生成线性工厂模型在规划水平上的轨迹(即模型预测控制)。虽然凸优化允许快速规划,但由于欧几里得距离计算往往会破坏凸性,因此避免障碍可能具有挑战性。通过使用半空间凸松弛,我们的规划器推断出一个近似的距离到障碍物的度量,该度量在其决策变量中是线性的,并且保持了凸性。此外,通过迭代更新规划视界上的松弛,改进了半空间近似,实现了灵活的回避机动。我们通过引入分段二次代价的软惩罚变量计算进一步增强规避性能。作为概念验证,我们在单智能体和多智能体任务中展示了双积分器模型上的规划器-在2D和3D环境中避免多个障碍物和其他智能体。我们使用线性倒立摆模型(LIPM)在模拟中通过双足行走绕过障碍物来展示腿部运动的扩展。然后,我们提出了两组硬件实验,展示了四轴飞行器的实时避障:(1)避开10m/s的摆锤和(2)躲避追逐的无人机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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