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首页> 外文期刊>Mechatronics, IEEE/ASME Transactions on >Adaptive Neural Network Control of a Compact Bionic Handling Arm
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Adaptive Neural Network Control of a Compact Bionic Handling Arm

机译:紧凑型仿生搬运臂的自适应神经网络控制

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摘要

In this paper, autonomous control problem of a class of bionic continuum robots named “Compact Bionic Handling Arm” (CBHA) is addressed. These robots can reproduce biological behaviors of trunks, tentacles, or snakes. The modeling problem associated with continuum robots includes nonlinearities, structured and unstructured uncertainties, and the hyperredundancy. In addition to these problems, the CBHA comprises the hysteresis behavior of its actuators and a memory phenomenon related to its structure made of polyamide materials. These undesirable effects make it difficult to design a control system based on quantitative models of the CBHA. Thus, two subcontrollers are proposed in this paper. One, encapsulated in the other, and both implemented in real time allow controlling of the CBHA's end-effector position. The first subcontroller controls the CBHA's kinematics based on a distal supervised learning scheme. The second subcontroller controls the CBHA's kinetics based on an adaptive neural control. These subcontrollers allow a better assessment of the stability of the control architecture while ensuring the convergence of Cartesian errors. The obtained experimental results using a CBHA robot show an accurate tracking of the CBHA's end-effector position.
机译:本文针对一类称为“紧凑型仿生搬运臂”(CBHA)的仿生连续体机器人的自主控制问题进行了研究。这些机器人可以重现树干,触手或蛇的生物行为。与连续机器人相关的建模问题包括非线性,结构化和非结构化不确定性以及超冗余。除这些问题外,CBHA还包括其执行器的磁滞行为以及与由聚酰胺材料制成的结构有关的记忆现象。这些不良影响使得难以基于CBHA的定量模型设计控制系统。因此,本文提出了两个子控制器。一个封装在另一个中,并且都实时实现,因此可以控制CBHA的末端执行器位置。第一个子控制器基于远端监督学习方案控制CBHA的运动学。第二个子控制器基于自适应神经控制来控制CBHA的动力学。这些子控制器可以在确保笛卡尔误差收敛的同时更好地评估控制体系结构的稳定性。使用CBHA机器人获得的实验结果显示了对CBHA末端执行器位置的精确跟踪。

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