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Deep Recurrent Neural Networks Based Obstacle Avoidance Control for Redundant Manipulators

机译:基于深度递归神经网络的冗余度机械臂避障控制

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摘要

Obstacle avoidance is an important subject in the control of robot manipulators, but is remains challenging for robots with redundant degrees of freedom, especially when there exist complex physical constraints. In this paper, we propose a novel controller based on deep recurrent neural networks. By abstracting robots and obstacles into critical point sets respectively, the distance between the robot and obstacles can be described in a simpler way, then the obstacle avoidance strategy is established in form of inequality constraints by general class-K functions. Using minimal-velocity-norm (MVN) scheme, the control problem is formulated as a quadratic-programming case under multiple constraints. Then a deep recurrent neural network considering system models is established to solve the QP problem online. Theoretical conduction and numerical simulations show that the controller is capable of avoiding static or dynamic obstacles, while tracking the predefined trajectories under physical constraints.
机译:避障是机器人操纵器控制中的重要课题,但是对于具有冗余自由度的机器人(尤其是在存在复杂的物理约束条件时),仍然具有挑战性。在本文中,我们提出了一种基于深度递归神经网络的新型控制器。通过将机器人和障碍物分别抽象为临界点集,可以更简单地描述机器人与障碍物之间的距离,然后通过通用的K类函数以不等式约束的形式建立避障策略。使用最小速度范数(MVN)方案,将控制问题表述为在多重约束下的二次编程情况。然后建立一个考虑系统模型的深度递归神经网络,以在线解决QP问题。理论传导和数值模拟表明,该控制器能够在物理约束下跟踪预定轨迹的同时避免静态或动态障碍。

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