噪声条件下7相电机故障严重程度估计的性能

Lu Zhang, C. Delpha, D. Diallo
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摘要

这项工作提出了一种在噪声存在下使用测量电流估计7相电机故障严重程度的方法。该方法是基于固定参考系的解析模型和对四个虚拟机器的直流和基元分量的分析。CUSUM算法的决策函数斜率随故障严重程度的不同而显著不同,可用于快速评估故障严重程度估计的性能。分析了不同噪声水平下故障严重程度估计对决策函数斜率的影响。仿真结果表明,在高噪声条件下,该决策函数是一种有效的故障估计指标。当噪声水平较高时,决策函数及其斜率噪声较大。相反,当噪声水平较低时,决策函数及其斜率的噪声较小。结果还表明,对于所研究的三种故障类型(增益故障、相移故障和平均值故障),虚拟机在平稳帧中的电流分量对噪声具有明显的鲁棒性。
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Performance of Fault Severity Estimation in 7-Phase Electrical Machines under Noisy Conditions
This work proposes a method for estimating fault severity in the presence of noise using the measured currents for a 7-phase electrical machine. The method is based on analytical models in stationary reference frames and analysis of the DC and fundamental components in the four fictitious machines. The slope of the decision function from the CUSUM algorithm, which will be noticeably different depending on the fault severity, is used to assess the performance of the fault severity estimation rapidly. The effects on the decision function’s slope of the fault severity estimation for different noise levels are evaluated. The simulation results show that even in presence of high noise levels, the decision function is an efficient fault estimation indicator. When the noise level is high, the decision function and its slope are noisier. Conversely, the decision function and its slope are less noisy when the noise level is low. The results also show that for the three fault types under study (gain fault, phase shift fault, and mean value fault), the current components of the fictitious machines in the stationary frames have distinct robustness to noise.
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