SmartLabAirgap: Helping Electrical Machines Air Gap Field Learning

Knowledge Pub Date : 2024-07-11 DOI:10.3390/knowledge4030021
Carla Terron-Santiago, J. Martínez-Román, J. Burriel-Valencia, Ángel Sapena-Bañó
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Abstract

Undergraduate courses in electrical machines often include an introduction to the air gap magnetic field as a basic element in the energy conversion process. The students must learn the main properties of the field produced by basic winding configurations and how they relate to the winding current and frequency. This paper describes a new test equipment design aimed at helping students achieve these learning goals. The test equipment is designed based on four main elements: a modified slip ring induction machine, a winding current driver board, the DAQ boards, and a PC-based virtual instrument. The virtual instrument provides the winding current drivers with suitable current references depending on the user selected machine operational status (single- or three-phase/winding with DC or AC current) and measures and displays the air gap magnetic field for that operational status. Students’ laboratory work is organized into a series of experiments that guide their achievement of these air gap field-related abilities. Student learning, assessed based on pre- and post-lab exams and end-of-semester exams, has increased significantly. The students’ opinions of the relevance, usefulness, and motivational effects of the laboratory were also positive.
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智能实验室气隙:帮助电机气隙现场学习
电机专业的本科课程通常包括气隙磁场的介绍,这是能量转换过程中的一个基本要素。学生必须了解基本绕组配置所产生磁场的主要特性,以及它们与绕组电流和频率的关系。本文介绍了一种新的测试设备设计,旨在帮助学生实现这些学习目标。测试设备的设计基于四个主要元素:改进的滑环感应机、绕组电流驱动器板、DAQ 板和基于 PC 的虚拟仪器。虚拟仪器根据用户选择的机器运行状态(单相或三相/绕组,直流或交流电流)为绕组电流驱动器提供合适的电流基准,并测量和显示该运行状态下的气隙磁场。学生的实验室工作被组织成一系列实验,指导他们实现这些与气隙磁场相关的能力。根据实验前和实验后考试以及学期末考试对学生学习情况的评估,学生的学习成绩有了显著提高。学生们对实验室的相关性、实用性和激励效果也给予了积极评价。
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