Linear vs. Nonlinear Modeling of Continuum Robotic Arms Using Data-Driven Method

A. Parvaresh, S. Moosavian
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引用次数: 3

Abstract

Dynamics modeling of continuum robotic arms is of great importance due to the highly nonlinear characteristics, uncertain and complex structure, and the inherent underactuation. This affects further usage in various aspects, including inverse kinematics, trajectory generation, control and optimization. In this paper, a modelling approach is proposed through the use of data-driven identification by linear and nonlinear models known as ARX (autoregressive with exogenous terms) and NARX (nonlinear autoregressive with exogenous terms) models. The unknown parameters in the ARX model are the system parameters; while the structure is known. However, for NARX model, the whole structure is considered to be unknown. These two structures are used to model a single-section continuum robotic arm, and the results are compared. Finally, the advantages and disadvantages of them are discussed.
基于数据驱动方法的连续体机械臂线性与非线性建模
连续体机械臂具有高度非线性、结构不确定和复杂、固有欠驱动等特点,其动力学建模具有重要意义。这影响了在各个方面的进一步应用,包括逆运动学、轨迹生成、控制和优化。本文提出了一种建模方法,通过使用被称为ARX(带有外生项的自回归)和NARX(带有外生项的非线性自回归)模型的线性和非线性模型进行数据驱动识别。ARX模型中的未知参数为系统参数;虽然结构是已知的。然而,对于NARX模型,整个结构被认为是未知的。将这两种结构用于单截面连续机械臂的建模,并对结果进行了比较。最后,对它们的优缺点进行了讨论。
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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