Identification and Position Control of a Continuum Robotic Arm

A. Parvaresh, S. A. Moosavi, S. A. A. Moosavian
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引用次数: 9

Abstract

Compared to traditional robots, continuum robotic arms have many advantages, including higher maneuverability, lower cost and weight, secure operation and so on, which motivate researchers in this field. Modeling and identifying these systems are very important due to their use in control applications; however, due to the complex nonlinear nature and presence of uncertainties, achieving an appropriate model is a great challenge. In this paper, after evaluating the repeatability of the system, which influences the model identification, the NARX model is presented and neural network is employed for developing the model. The model is validated by the experimental results. Then, contolling the end-effector position of the system using the identified model is performed.
连续体机械臂的识别与位置控制
与传统机器人相比,连续体机械臂具有机动性高、成本和重量轻、操作安全等优点,这是该领域研究的热点。建模和识别这些系统是非常重要的,因为它们在控制应用中使用;然而,由于复杂的非线性性质和不确定性的存在,获得一个合适的模型是一个巨大的挑战。在评估了系统的可重复性对模型辨识的影响后,提出了NARX模型,并利用神经网络对模型进行了开发。实验结果验证了该模型的正确性。然后,利用所识别的模型对系统的末端执行器位置进行控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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