Effect of varying the step-size of least mean squares filter in the accuracy of extraction of passive RFID root-music direction-of-arrival estimates

R. T. L. Peñas, J. D. dela Cruz
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Abstract

This work establishes the extraction of root-multiple signal classification (root-MUSIC) direction-of-arrival (DoA) estimates of a passive radio frequency identification (RFID) tag system with a reader that utilizes a two-element uniform linear array. The accuracy of the estimates can be improved by using an adaptive filter called least mean squares algorithm (LMS) to reduce the effect of noise and carrier leakage before the extraction is done. Through the use of a simulation, random complex signals are primarily set from angle bearings of -90 through positive 90 degrees, inclusive of carrier leakage and noise, characterized as additive, white, random, and Gaussian-distributed. The LMS filter, with step sizes of 0.008, 0.003 and 0.002, is designed to detect the deterioration of affected parameters of the complex signal in order to reduce the inaccuracy of the estimates as effects of the added distortion. The accuracy of the estimates are compared to the actual DoA of the tag by measuring the error in degrees and with respect to the variation of the step-size. Simulations have also been done to observe the effect of signal-to-noise ratio (SNR) of the received signal and the increase of the number of samples taken before extraction, in addition to the variation of the step size of the filter.
改变最小均方滤波器步长对无源RFID根音乐到达方向估计提取精度的影响
这项工作建立了一个无源射频识别(RFID)标签系统的根多信号分类(根- music)到达方向(DoA)估计的提取,该系统使用了一个使用二元均匀线性阵列的阅读器。采用最小均方算法(LMS)自适应滤波,降低噪声和载波泄漏的影响,可以提高估计的精度。通过使用仿真,随机复杂信号主要从-90°到正90°的角度方向设置,包括载波泄漏和噪声,其特征为加性,白色,随机和高斯分布。LMS滤波器的步长分别为0.008、0.003和0.002,用于检测复杂信号中受影响参数的退化,以减少由于附加失真而导致的估计的不准确性。通过测量误差的程度和相对于步长变化的误差,将估计的精度与标签的实际DoA进行比较。仿真还观察了接收信号的信噪比(SNR)和提取前采样数的增加以及滤波器步长的变化对提取结果的影响。
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