基于模型的无刷直流电机电气传动故障检测

P. Dobra, M. Dobra, D. Moga, I. Sita, R. Munteanu
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引用次数: 2

摘要

微电子电路的不断改进使得对各种系统进行过程诊断成为可能,以提高性能和可靠性。故障检测和隔离领域的监测阶段旨在对故障源进行分类和安排。对于无刷直流电机,故障检测和诊断的最重要方法之一是对机器估计参数的变化进行分析。本文重点研究了基于无刷直流电机数学模型连续时间参数估计的故障检测与诊断的实现细节。连续时间参数直接关系到无刷直流电动机的物理特性。参数的估计采用了众所周知的用于动态系统辨识的预测误差方法。通过改变过程系数和应用统计决策方法,可以进行故障检测。在实际的数控机床上讨论了故障检测中的频域识别方法。离散傅立叶变换(DFT)与特定情况下的Goertzel算法实现故障检测的目的。与现有的故障检测领域的工作和结果不同,故障可以在时变的过程参数中检测出来。
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Model based fault detection for electrical drives with BLDC motor
Continuous improvements in microelectronic circuitry make possible the implementation of process diagnostics to a variety of systems in order to increase performances and reliability. The monitoring stage in the area of failure detection and isolation aims to classify and arrange the failure sources. In case of BLDC machines, one of the most important methods for failure detection and diagnosis starts with the analysis of the variations of the machine estimated parameters. The paper focuses on the implementation details of failure detection and diagnosis based on continuous time parameters estimation of BLDC motor mathematical model. Continuous time parameters are directly related to the physical characterizations of BLDC Motor. The parameters are estimated by the well-known prediction error methods devised for dynamic system identification. By changing the process coefficients and by applying statistical decision methods, failure detection occurs. The case of frequency domain identification in fail detection is also covered on a real CNC machine. Discrete Fourier Transform (DFT) with the particular case of Goertzel algorithms is implemented for fault detection purposes. Unlike existing work and results in the fault detection area, the failure can be detected among time-varying process parameters.
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