Modeling human intelligence and application to space object capturing

Panfeng Huang, Yangsheng Xu, Bin Liang
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引用次数: 3

Abstract

It is a great challenge for a robot in space to track and capture a free-flying object in the future space operations. In previous research, most of them employed model-based method which requires robot model in advance. However, it is difficult and time-consuming to obtain the precise mathematical model of robots. Moreover, the computer installed on the space robot is usually not so powerful due to the restriction of weight and volume, thus it is infeasible to computer dynamics parameters for real-time control. To facilitate the computation complexity, we present an approach based on human learning skill for tracking and catching objects. With human-teaching demonstration, the space robot is able to learn and abstract human tracking and capturing skill using an efficient neural-network learning architecture that combines flexible cascade neural networks with node-decoupled extended kalman filtering (CNN-NDEKF). The goal of skill learning is to obtain the most likely human performance from all the training examples and to transfer this skill to the space robot system by trained cascade neural network. We investigate the learning position trajectory in Cartesian space and position trajectory in Joint space respectively. Especially, learning position trajectory in joint space is useful to avoid the complex inverse kinematics of space robot and to lower the computation cost. The simulation results attest that this approach is useful and feasible in tracking trajectory planning and capturing of space robot. The proposed approach provides a feasible way to plan the tracking trajectory of space robot by learning human demonstration skill. The learning is significant in eliminating sluggish motion planning and correcting a motion command that the operator may mistakenly generate. It would be found useful in various other applications, such as human action recognition in man-machine interfaces, real-time training, and agile manufacturing.
人类智能建模及其在空间目标捕获中的应用
在未来的空间作战中,空间机器人对自由飞行物体的跟踪和捕获是一个巨大的挑战。在以往的研究中,大多采用基于模型的方法,需要事先建立机器人模型。然而,要获得机器人精确的数学模型是困难且耗时的。此外,由于重量和体积的限制,安装在空间机器人上的计算机通常不是很强大,因此对计算机动力学参数进行实时控制是不可行的。为了降低计算复杂度,我们提出了一种基于人类学习技能的跟踪和捕获目标的方法。通过人类的教学演示,空间机器人能够学习和抽象人类的跟踪和捕获技能,使用一种高效的神经网络学习架构,将灵活的级联神经网络与节点解耦扩展卡尔曼滤波(CNN-NDEKF)相结合。技能学习的目标是从所有训练样例中获得最可能的人类表现,并通过训练好的级联神经网络将该技能转移到空间机器人系统中。我们分别研究了在笛卡尔空间和关节空间中学习位置轨迹。特别是在关节空间中学习位置轨迹,可以避免空间机器人复杂的逆运动学,降低计算量。仿真结果表明,该方法在空间机器人的跟踪、轨迹规划和捕获中是有效可行的。该方法为通过学习人的演示技能来规划空间机器人的跟踪轨迹提供了一种可行的方法。学习在消除缓慢运动规划和纠正操作员可能错误生成的运动命令方面具有重要意义。它在其他各种应用中也很有用,比如人机界面中的人类动作识别、实时培训和敏捷制造。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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