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Toward Shared Working Space of Human and Robotic Agents Through Dipole Flow Field for Dependable Path Planning

机译:通过偶极子流场实现人机交互和机器人特工的共享工作空间以进行可靠的路径规划

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摘要

Recent industrial developments in autonomous systems, or agents, which assume that humans and the agents share the same space or even work in close proximity, open for new challenges in robotics, especially in motion planning and control. In these settings, the control system should be able to provide these agents a reliable path following control when they are working in a group or in collaboration with one or several humans in complex and dynamic environments. In such scenarios, these agents are not only moving to reach their goals, i.e., locations, they are also aware of the movements of other entities to find a collision-free path. Thus, this paper proposes a dependable, i.e., safe, reliable and effective, path planning algorithm for a group of agents that share their working space with humans. Firstly, the method employs the Theta* algorithm to initialize the paths from a starting point to a goal for a set of agents. As Theta* algorithm is computationally heavy, it only reruns when there is a significant change of the environment. To deal with the movements of the agents, a static flow field along the configured path is defined. This field is used by the agents to navigate and reach their goals even if the planned trajectories are changed. Secondly, a dipole field is calculated to avoid the collision of agents with other agents and human subjects. In this approach, each agent is assumed to be a source of a magnetic dipole field in which the magnetic moment is aligned with the moving direction of the agent. The magnetic dipole-dipole interactions between these agents generate repulsive forces to help them to avoid collision. The effectiveness of the proposed approach has been evaluated with extensive simulations. The results show that the static flow field is able to drive agents to the goals with a small number of requirements to update the path of agents. Meanwhile, the dipole flow field plays an important role to prevent collisions. The combination of these two fields results in a safe path planning algorithm, with a deterministic outcome, to navigate agents to their desired goals.
机译:自主系统或代理的最新工业发展(假设人类和代理共享相同的空间,甚至在附近工作),给机器人技术(尤其是运动计划和控制)提出了新的挑战。在这些设置中,当控制代理在一个复杂的,动态的环境中与一群人或几个人一起工作时,或者与一个或几个人合作时,控制系统应该能够为这些代理提供可靠的跟踪控制路径。在这样的情况下,这些代理不仅在移动以达到其目标即位置,而且还知道其他实体的移动以寻找无冲突的路径。因此,本文提出了一种可靠的,即安全,可靠和有效的路径规划算法,用于与人共享其工作空间的一组代理。首先,该方法采用Theta * 算法来初始化一组智能体从起点到目标的路径。由于Theta * 算法的计算量很大,因此仅在环境发生重大变化时才重新运行。为了处理代理的移动,定义了沿配置路径的静态流场。即使更改了计划的轨迹,代理也可以使用此字段导航并达到其目标。其次,计算偶极子场以避免代理与其他代理和人类受试者的碰撞。在这种方法中,假定每个代理都是偶极子磁场的源,其中磁矩与代理的移动方向对齐。这些物质之间的磁偶极-偶极相互作用产生排斥力,以帮助它们避免碰撞。所提出的方法的有效性已通过广泛的模拟进行了评估。结果表明,静态流场能够以很少的需求将代理推动到目标,以更新代理的路径。同时,偶极子流场在防止碰撞中起着重要作用。这两个字段的组合产生了安全的路径规划算法,并具有确定的结果,可将代理导航到其所需目标。

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