论文标题

在凝结配置空间中避免动态障碍物的反应性神经路径计划

Reactive Neural Path Planning with Dynamic Obstacle Avoidance in a Condensed Configuration Space

论文作者

Steffen, Lea, Weyer, Tobias, Ulbrich, Stefan, Roennau, Arne, Dillmann, Rüdiger

论文摘要

我们提出了一种具有动态障碍物的生物学启发方法,以避免动态障碍。路径计划是在自组织神经网络(SONN)产生的机器人的凝结配置空间中进行的。机器人本身和静态障碍物以及动态障碍物通过笛卡尔的任务空间映射到预先计算的运动学上。冷凝空间代表了环境的认知图,该图的灵感来自哺乳动物大脑中的位置细胞和认知图的概念。培训数据的产生以及评估是在伴随模拟的实际工业机器人上进行的。为了评估不断变化的环境中无动碰撞在线计划,实现了示威者。然后,对基于样本的计划者进行了比较研究。因此,我们可以证明该机器人能够在动态变化的环境中运行,并在令人印象深刻的0.02秒内重新计划其运动轨迹,从而证明我们概念的实时能力。

We present a biologically inspired approach for path planning with dynamic obstacle avoidance. Path planning is performed in a condensed configuration space of a robot generated by self-organizing neural networks (SONN). The robot itself and static as well as dynamic obstacles are mapped from the Cartesian task space into the configuration space by precomputed kinematics. The condensed space represents a cognitive map of the environment, which is inspired by place cells and the concept of cognitive maps in mammalian brains. The generation of training data as well as the evaluation were performed on a real industrial robot accompanied by simulations. To evaluate the reactive collision-free online planning within a changing environment, a demonstrator was realized. Then, a comparative study regarding sample-based planners was carried out. So we could show that the robot is able to operate in dynamically changing environments and re-plan its motion trajectories within impressing 0.02 seconds, which proofs the real-time capability of our concept.

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