Self-Collision Avoidance Control of Dual-Arm Multi-Link Robot Using Neural Network Approach

V. Kramar, O. Kramar, A. Kabanov
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引用次数: 1

Abstract

The problem of mutual collisions of manipulators of a dual-arm multi-link robot (so-called self-collisions) arises during the performance of a cooperative technological operation. Self-collisions can lead to non-fulfillment of the technological operation or even to the failure of the manipulators. In this regard, it is necessary to develop a method for online detection and avoidance of self-collisions of manipulators. The article presents a method for detecting and avoiding self-collisions of multi-link manipulators using an artificial neural network by the example of the dual-arm robot SAR-401. A comparative analysis is carried out and the architecture of an artificial neural network for self-collisions avoidance control of dual-arm robot manipulators is proposed. The novelty of the proposed approach lies in the fact that it is an alternative to the generally accepted methods of detecting self-collisions based on the numerical solution of inverse kinematics problems for manipulators in the form of nonlinear optimization problems. Experimental results performed based on MATLAB model, the simulator of the robot SAR-401 and on the real robot itself confirmed the applicability and effectiveness of the proposed approach. It is shown that the detection of possible self-collisions using the proposed method based on an artificial neural network is performed approximately 10 times faster than approaches based on the numerical solution of the inverse kinematics problem while maintaining the specified accuracy.
基于神经网络的双臂多连杆机器人自避碰控制
双臂多连杆机器人在进行协同工艺操作时,会出现机械手相互碰撞的问题(即自碰撞)。自碰撞会导致工艺操作无法完成,甚至机械手失效。在这方面,有必要开发一种在线检测和避免机械手自碰撞的方法。以双臂机器人SAR-401为例,提出了一种基于人工神经网络的多连杆机械手自碰撞检测与避免方法。通过对比分析,提出了双臂机器人自避碰控制的人工神经网络体系结构。该方法的新颖之处在于,它是一种普遍接受的基于非线性优化问题形式的机械臂逆运动学问题数值解的自碰撞检测方法的替代方法。基于MATLAB模型、SAR-401机器人仿真器和真实机器人的实验结果验证了该方法的适用性和有效性。结果表明,在保持给定精度的情况下,基于人工神经网络的自碰撞检测方法比基于反运动学问题数值解的方法快约10倍。
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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CiteScore
6.30
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