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Embedded system for the detection of brushless exciter failure.

机译:用于检测无刷励磁机故障的嵌入式系统。

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摘要

Brushless exciters are used in synchronous motors. The role of these exciter circuits is to provide field excitation as well as synchronize the speed of the rotor with the rotational speed of the moving electromagnetic field. If the exciter fails to provide the correct DC voltage the motor will not work correctly. The aim of this work is to provide a wireless system capable of monitoring the operation of a brushless synchronous motor and to provide an embedded fault detection capability. The technique used to achieve this goal utilizes a neural network to classify different working modes of the diode bridge.;Two systems were developed: a wireless system, small enough to be installed inside the motor and capable of transmitting field current values to a monitoring station for display and storage. This therefore, allows real time monitoring of the motor's operation.;The second system developed is based on a micro-controller and is capable of detecting open and short circuit faults that appear in the rectifying bridge of the excitation system. Implementing the Neural Network detection scheme on an embedded solution proved to be feasible. The results obtained indicate good noise tolerance, improved detection speed over previous detection systems and good cost efficiency.
机译:无刷励磁机用于同步电动机。这些励磁电路的作用是提供励磁,并使转子的速度与运动的电磁场的转速同步。如果励磁机无法提供正确的直流电压,则电动机将无法正常工作。这项工作的目的是提供一种无线系统,该系统能够监视无刷同步电动机的运行并提供嵌入式故障检测功能。用于实现该目标的技术是利用神经网络对二极管电桥的不同工作模式进行分类。开发了两个系统:一个无线系统,该系统足够小,可以安装在电动机内部,并且能够将现场电流值传输到监控站用于显示和存储。因此,这可以实时监视电动机的运行情况。所开发的第二个系统基于微控制器,并且能够检测出励磁系统的整流桥中出现的断路和短路故障。在嵌入式解决方案上实施神经网络检测方案被证明是可行的。获得的结果表明,良好的噪声耐受性,比以前的检测系统更高的检测速度以及良好的成本效率。

著录项

  • 作者

    Szekely, Zsolt.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Engineering Computer.;Engineering Electronics and Electrical.;Engineering Mechanical.;Engineering General.
  • 学位 M.S.E.
  • 年度 2013
  • 页码 72 p.
  • 总页数 72
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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