基于霍尔效应传感器和神经网络的球形电机传感系统设计

Jinjun Guo, Chanbeom Bak, Hungsun Son
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引用次数: 4

摘要

提出了一种测量球面轮电机3个转角的传感系统。与传统电机只能控制单自由度运动不同,SWM能够提供3自由度旋转运动。然而,实时测量这三种高度耦合的旋转运动是一项挑战。不像以前的一些传感系统使用光学编码器分别测量沿每个轴的旋转,首选由霍尔效应传感器组成的非接触式传感系统,以避免摩擦和额外的力矩惯性,这可能会损害动态性能。本文提出了一种基于磁传感器组合的传感系统,并利用神经网络从测量的磁场中计算旋转角度。本文的组织结构如下:首先演示了利用分布式多极模型(DMP)获取SWM磁场分布(MFD)的方法;然后通过仿真研究了影响测量精度的重要因素;对SWM转子进行了实验研究;最后,提出了改进传感系统的可行方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of a sensing system for a spherical motor based on Hall Effect sensors and neural networks
This paper proposes a sensing system to measure 3 rotational angles of a spherical wheel motor (SWM). Unlike conventional motors capable of controlling a single DOF motion only, a SWM is able to provide 3-DOF rotational motions. However, it is challenging to measure the three highly-coupled rotational motions in real time. Unlike some previous sensing systems using optical encoders to measure rotation along each axis separately, a contact-less sensing system such as one composed of Hall Effect sensors is preferred, so as to avoid friction and additional moment inertia, which may damage dynamic performance. In this paper, a sensing system based on a combination of magnetic sensors is proposed, and neural networks are applied to compute rotational angles from measured magnetic field. The paper is organized as followings: distributed multi-pole model (DMP) to obtain the SWM magnetic field distribution (MFD) is demonstrated first; important factors affecting measuring accuracy is researched by simulation then; experimental investigations for a SWM rotor are presented; finally, possible methods to improve proposed sensing system are proposed.
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