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Data-Driven Multi-Stage Motion Planning of Parallel Kinematic Machines

机译:并联运动机的数据驱动多阶段运动规划

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摘要

A multistage data-driven neuro-fuzzy system is considered for the multiobjective trajectory planning of Parallel Kinematic Machines (PKMs). This system is developed in two major steps. First, an offline planning based on robot kinematic and dynamic models, including actuators, is performed to generate a large dataset of trajectories, covering most of the robot workspace and minimizing time and energy, while avoiding singularities and limits on joint angles, rates, accelerations, and torques. An augmented Lagrangian technique is implemented on a decoupled form of the PKM dynamics in order to solve the resulting nonlinear constrained optimal control problem. Then, the outcomes of the offline-planning are 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 optimized, 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:多级数据驱动的神经模糊系统被考虑用于并行运动机(PKM)的多目标轨迹规划。该系统分两个主要步骤开发。首先,执行基于机器人运动学和动态模型(包括执行器)的离线计划,以生成大量的轨迹数据集,涵盖机器人的大部分工作空间并最大程度地减少时间和精力,同时避免奇异之处和关节角度,速率,加速度的限制,以及扭矩。在解耦形式的PKM动力学上实现了增强的拉格朗日技术,以解决由此产生的非线性约束最优控制问题。然后,将离线计划的结果用于构建数据驱动的神经模糊推理系统,以学习和捕获所需的PKM动态行为。一旦优化了该系统,就可以用合理的时间复杂度来实现接近最佳的在线计划。仿真和仿真证明了该方法在2自由度平面PKM上的有效性。

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