Mechatronic Device Control by Artificial Intelligence

机电一体化 运动学 控制工程 机制(生物学) 人工智能 校准 工程类 机器人末端执行器 机器人学 自由度(物理和化学) 计算机科学 模拟 机器人 统计 认识论 物理 经典力学 量子力学 哲学 数学
作者
Martin Bohušík,Vladimír Stenchlák,Miroslav Císar,Vladimír Bulej,Ivan Kuric,Tomáš Dodok,Andrej Bencel
出处
期刊:Sensors [Multidisciplinary Digital Publishing Institute]
卷期号:23 (13): 5872-5872
标识
DOI:10.3390/s23135872
摘要

Nowadays, artificial intelligence is used everywhere in the world and is becoming a key factor for innovation and progress in many areas of human life. From medicine to industry to consumer electronics, its influence is ever-expanding and permeates all aspects of our modern society. This article presents the use of artificial intelligence (prediction) for the control of three motors used for effector control in a spherical parallel kinematic structure of a designed device. The kinematic model used was the “Agile eye” which can achieve high dynamics and has three degrees of freedom. A prototype of this device was designed and built, on which experiments were carried out in the framework of motor control. As the prototype was created through the means of the available equipment (3D printing and lathe), the clearances of the kinematic mechanism were made and then calibrated through prediction. The paper also presents a method for motor control calibration. On the one hand, using AI is an efficient way to achieve higher precision in positioning the optical axis of the effector. On the other hand, such calibration would be rendered unnecessary if the clearances and inaccuracies in the mechanism could be eliminated mechanically. The device was designed with imperfections such as clearances in mind so the effectiveness of the calibration could be tested and evaluated. The resulting control of the achieved movements of the axis of the device (effector) took place when obtaining the exact location of the tracked point. There are several methods for controlling the motors of mechatronic devices (e.g., Matlab-Simscape). This paper presents an experiment performed to verify the possibility of controlling the kinematic mechanism through neural networks and eliminating inaccuracies caused by imprecisely produced mechanical parts.

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