Neural network control of a robotic manipulator arm for undersea applications

A. Westerman
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引用次数: 2

Abstract

A lightweight, direct-drive undersea testbed manipulator arm was configured for integration and subsequent evaluation of neural network technologies. The author reports them initial results of an artificial neural network model used to control this undersea manipulator. An iterative trajectory generator for the manipulator (constrained to planar motion) using a backpropagation network is described. It provided the intermittent desired joint angles given the relative position information about the arm and the target. This work built upon the extended work of D. Sobajic and L. Pao, (1988). The author discusses a preliminary neural network architecture which learns the internal and controller model for the undersea manipulator arm. This control structure was inspired by the work of D. Nguyen and B. Widrow, (1990). Although this work is still underway, preliminary tests are encouraging, and are aimed at satisfying the adaptive capability necessary for operating in an unstructured ocean environment.<>
水下机械臂的神经网络控制
设计了一种轻型、直接驱动的水下试验台机械臂,用于神经网络技术的集成和后续评估。作者报告了用于控制该水下机械手的人工神经网络模型的初步结果。描述了一种基于反向传播网络的机械臂平面运动迭代轨迹生成器。它根据手臂和目标的相对位置信息,提供了间歇性所需的关节角。这项工作建立在D. Sobajic和L. Pao(1988)的扩展工作的基础上。讨论了一种学习水下机械臂内部模型和控制器模型的初步神经网络结构。这种控制结构的灵感来自于D. Nguyen和B. Widrow(1990)的研究。虽然这项工作仍在进行中,但初步测试令人鼓舞,旨在满足在非结构化海洋环境中运行所需的适应能力。
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