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Comparative Investigation of Broken Bar Fault Detectability in Induction Motor Through FFT and MUSIC Techniques

机译:通过FFT和音乐技术对感应电动机断裂杆故障可检测性的比较研究

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The purpose of the current study is to detect the squirrel cage induction machine under the Broken Rotor Bars fault (BRBs). In this context, most of the studies were starting by using the Fast Fourier Transform (FFT) technique and applied to the various signals extracted from the motor as the stator phases currents. Unfortunately, FFT technique has some drawbacks such as suffering from the spectral leakage, also, it needs large data points to give clear results about the state of the machine. In addition, most of the induction motors are using speed control devices (the inverters), these devices reduce the effectiveness of FFT because it leads to the appearance of an additional harmonics, and it produces a further spectrum noises. To overcome these limitations, the Multiple Signal Classification (MUSIC) algorithm have been applied to replace the FFT. In particular, MUSIC algorithm allows to minimize the computation of the signal data without losing its diagnostic effectiveness, on the other hand, this technique allows to remove the noise that accompanies the signal. In this paper, the simulation results evidence the robustness of the MUSIC technique to detect the BRBs when the machine is operating under different conditions.
机译:目前研究的目的是在破碎的转子杆故障(BRB)下检测鼠笼式感应机。在这种情况下,大多数研究通过使用快速傅里叶变换(FFT)技术开始并施加到从电动机提取的各种信号作为定子相电流。不幸的是,FFT技术具有一些缺点,例如遭受光谱泄漏,而且还需要大的数据点,以便对机器的状态发出明显的结果。此外,大多数感应电动机都使用速度控制装置(逆变器),这些装置降低了FFT的有效性,因为它导致额外的谐波的外观,并且它产生进一步的光谱噪声。为了克服这些限制,已经应用了多个信号分类(音乐)算法来替换FFT。特别地,音乐算法允许最小化信号数据的计算而不丢失其诊断效果,另一方面,该技术允许去除伴随信号的噪声。在本文中,模拟结果证明了当机器在不同条件下运行时检测BRB的音乐技术的鲁棒性。

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