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A ROBUST LMS-BASED FOURIER ANALYZER CAPABLE OF ACCOMMODATING THE FREQUENCY MISMATCH

机译:一种基于强大的基于LMS的傅立叶分析仪,能够容纳频率不匹配

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The conventional LMS Fourier analyzer has been successfully used to analyze sinusoidal and periodic signals in additive noise. If the user provides the correct signal frequencies, the analyzer produces good estimates for the discrete Fourier coefficients (DFCs) of the signal. However, if the signal frequencies fed to the analyzer vary from the true signal frequencies, i.e., a frequency mismatch (FM) exists, the performance of the conventional LMS algorithm degenerates. In this paper, we propose a new LMS-based Fourier analyzer that yields superior results to the conventional LMS one. The estimation of DFCs and the reduction of FM in the new algorithm are carried out simultaneously based on the least mean square and the least mean p-power error criteria, respectively. This new algorithm has a simple structure and shows a small increase in computations. Simulations as well as real-life application to real signals generated by a large-scale factory cutting machine are provided to show the effectiveness of our new algorithm. For the latter, the performance improvement is as high as 8.3 [dB].
机译:传统的LMS傅立叶分析仪已成功地用于分析添加剂噪声中的正弦和周期信号。如果用户提供正确的信号频率,则分析仪对信号的离散傅里叶系数(DFC)产生良好的估计。然而,如果向分析器馈送到分析器的信号频率因真实信号频率而变化,即存在频率不匹配(FM),则传统LMS算法退化的性能。在本文中,我们提出了一种基于新的LMS的傅立叶分析仪,其将卓越的结果产生优异的LMS。在新算法中估计DFC和FM的减少分别基于最小均线和最小平均值的P电源误差标准同时执行。这种新算法具有简单的结构,并显示计算的小幅增加。提供了对大型工厂切割机产生的实际信号的仿真以及实际应用,以显示我们新算法的有效性。对于后者,性能改进高达8.3 [DB]。

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