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CIAO ?: MPC-based Safe Motion Planning in Predictable Dynamic Environments

机译:Ciao :基于MPC的安全运动规划可预测的动态环境

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Robots have been operating in dynamic environments and shared workspaces for decades. Most optimization based motion planning methods, however, do not consider the movement of other agents, e.g. humans or other robots, and therefore do not guarantee collision avoidance in such scenarios. This paper builds upon the Convex Inner ApprOximation (CIAO) method and proposes a motion planning algorithm that guarantees collision avoidance in predictable dynamic environments. Furthermore, it generalizes CIAO’s free region concept to arbitrary norms and proposes a cost function to approximate time optimal motion planning. The proposed method, CIAO*, finds kinodynamically feasible and collision free trajectories for constrained single body robots using model predictive control (MPC). It optimizes the motion of one agent and accounts for the predicted movement of surrounding agents and obstacles. The experimental evaluation shows that CIAO* reaches close to time optimal behavior.
机译:机器人已经在动态环境中运行,几十年的共享工作区。然而,基于最优化的运动计划方法,不考虑其他代理的运动,例如,人类或其他机器人,因此不要保证在这种情况下避免碰撞。本文构建在凸内近似(CIAO)方法上,提出了一种运动规划算法,可确保可预测的动态环境中的冲突避免。此外,它将Ciao的自由地区概念概括为任意规范,并提出了近似时间最佳运动规划的成本函数。使用模型预测控制(MPC),所提出的方法Ciao *,Ciao *,用于限制单体机器人的动力学可行和自由轨迹。它优化了一个代理的运动,并占据了周围代理和障碍物的预测运动。实验评估表明,Ciao *接近时间最佳行为。

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