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Hybrid multi-objective motion planning of Parallel Kinematic Machines

机译:平行运动机器混合多目标运动规划

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In this paper we consider the problem of multi-objective trajectory planning to Parallel Kinematic Machines (PKMs). A two stage system is developed. In a first stage is an offline planning based on robot kinematics and dynamics, including actuators, is performed to generate a large dataset of trajectories, these trajectory cover mostly of the robot workspace and minimize time and energy, while avoiding singularities and limits on joint angles, rates, accelerations and torques. An augmented Lagrangian decoupling to solve the resulting non-linear constrained optimal control problem. The offline-planning outcomes are then used to build a data-driven neuro-fuzzy inference system to learn and capture the desired dynamic behavior of the PKM. Once this system is trained, it is used to achieve near-optimal online planning with a reasonable time complexity. Simulations proving the effectiveness of this approach on a 2-degrees of freedom planar PKM are given and discussed.
机译:在本文中,我们将多目标轨迹规划的问题考虑到平行运动机器(PKMS)。 开发了两级系统。 在第一阶段是基于机器人运动学和动态的离线规划,包括执行器,以生成轨迹的大型数据集,这些轨迹主要包括机器人工作区,并最大限度地减少时间和能量,同时避免奇点和关节角度的限制 ,费率,加速和扭矩。 增强拉格朗日解耦以解决所产生的非线性约束的最佳控制问题。 然后使用离线规划结果来构建数据驱动的神经模糊推理系统,以学习和捕获PKM的所需动态行为。 训练该系统后,它用于在合理的时间复杂度实现近乎最佳的在线规划。 仿真证明了这种方法对2学生自由平面PKM的有效性。

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