Exploration of Generator Noise Cancelling Using Least Mean Square Algorithm

S. Prasetyowati, Bustanul Arifin, A. A. Nugroho, Muhammad Khosyi'in
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Abstract

Generator noise can be categorized as monotonous noise, which is very annoying and needs to be eliminated. However, noise-cancelling is not easy to do because the algorithm used is not necessarily suitable for each noise. In this study, generator noise was obtained by recording near the generator (outdoor signal) and from the room (indoor signal). Noise generator exploration is carried out to determine whether the noise signal can be removed using the Adaptive LMS method. Exploration was carried out by analyzing statistical signals, spectrum with Fast Fourier Transform (FFT) and Inverse FFT (IFFT), and analyzing the frequency distribution of the remaining noise. The results showed that the correlation coefficients were close to each other. Outdoor and indoor signals are at low frequency. The behavior of FFT and IFFT if described in two dimensions, namely real and imaginary axes, formed a circle with a zero center and has parts that come out of the circle. It confirms that noise-cancelling with adaptive LMS can be realized well even though some noise is still left. The residual noise has formed an impulse that showed normally distributed with mean=-0.0000735 and standard deviation =0.000735. This indicates that the residual noise was no longer disturbing.
利用最小均方算法消除发电机噪声的探索
发电机噪声可归类为单调噪声,非常烦人,需要消除。然而,噪声消除并不容易做到,因为所使用的算法不一定适用于每种噪声。在本研究中,通过在发生器附近(室外信号)和在室内(室内信号)进行记录来获得发生器噪声。进行噪声发生器探测,以确定是否可以使用自适应LMS方法去除噪声信号。利用快速傅立叶变换(FFT)和逆傅立叶变换(IFFT)对统计信号、频谱进行分析,并分析剩余噪声的频率分布。结果表明,相关系数接近。室内外信号均为低频信号。FFT和IFFT的行为如果在两个维度上描述,即实轴和虚轴,形成一个圆心为零的圆,并且有部分从圆中出来。验证了在噪声残留的情况下,自适应LMS可以很好地实现降噪。残余噪声形成一个正态分布的脉冲,均值=-0.0000735,标准差=0.000735。这表明残余噪声不再干扰。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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