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A neural network approach to real-time path planning with safety consideration

机译:安全考虑实时路径规划的神经网络方法

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In this paper, a neural network approach is proposed for real-time path planning of robots with safety consideration. The neural network is topologically organised, which is based on a previous biologically inspired model for dynamical trajectory generation of a mobile robot in a nonstationary environment. The state space of the neural network can be the joint space of multilink robot manipulators or the Cartesian workspace. This model is capable of dealing with multiple target problems as well. The target globally attracts the robot, while the obstacles push the robot away locally to avoid collisions. By taking into account of the clearance from obstacles, the planned "comfortable" path does not suffer either the "too close" or the "too far" problems. Each neuron has only local lateral connections. The optimal path is generated in real-time through the dynamics of the neural activity landscape without explicitly optimising any cost function. Therefore, it is computationally efficient. The stability of the network is guaranteed by the existence of a Lyapunov function. The effectiveness and efficiency are demonstrated through simulation studies.
机译:本文提出了一种具有安全考虑机器人的实时路径规划的神经网络方法。神经网络是拓扑组织的,其基于在非间平环境中的移动机器人的动态轨迹产生的先前生物学启发模型。神经网络的状态空间可以是多联网机器人机械手或笛卡尔工作空间的关节空间。该模型也能处理多个目标问题。目标全球吸引机器人,而障碍物将机器人在本地推动以避免碰撞。通过考虑到障碍的许可,计划的“舒适”路径不会遭受“太近”或“太远”的问题。每个神经元仅具有局部侧面连接。通过神经活动横向的动态实时生成最佳路径,而无需明确优化任何成本函数。因此,它是计算上有效的。通过Lyapunov函数的存在,保证了网络的稳定性。通过仿真研究证明了有效性和效率。

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