基于有限元法的模块化软体机器人人工神经网络训练

G. Runge, M. Wiese, A. Raatz
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引用次数: 33

摘要

快速发展的软机器人领域的进展表明,由软材料制成的机器人系统和设备在适应性和灵活性方面超过了刚性连杆机器人。因此,软机器人被认为是人类和自动机器之间的桥梁。尽管软机器人的发展越来越成熟,但对软机器人闭环控制的研究仍然滞后。这可以部分归因于高度非线性,这使精确建模复杂化。人工神经网络(ANN)可以是一个非常强大的工具,甚至可以捕获那些经常被忽视的非线性。在本文中,我们扩展了之前基于有限元的模块化软机器人人工神经网络训练的研究。本文提出了一种能够生成足够大的训练数据的方法来学习可在三维空间中运动的软气动执行器的运动学模型。该方法具有通用性,可用于学习运动模型进行仿真和控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FEM-based training of artificial neural networks for modular soft robots
Advances in the rapidly growing field of soft robotics show that robotic systems and devices made from soft materials surpass rigid-links robots in terms of adaptability and flexibility. As such, soft robots are believed to bridge the gap between humans and autonomous machines. Despite an increasing sophistication in the development of soft robots, research on closed loop control of soft robots still lags behind. This can be partly attributed to the high nonlinearities, which complicate accurate modeling. Artificial neural networks (ANN) can be a very powerful tool for capturing even those non-linearities that are very often neglected. In this article, we extend our previous research on finite element (FE) based training of artificial neural networks for modular soft robots. We present a method by which sufficiently large amounts of training data can be generated in order to learn the kinematic model of a soft pneumatic actuator which can move in three-dimensional space. The method is generic and can be employed for learning of kinematic models for simulation and control.
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