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Performance Evaluation of 1D DoA Estimation for DECOM and UCLA Using MUSIC Algorithm

机译:使用音乐算法的1D DOA估计对1D DOA估计的性能评估

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Sparse arrays are gaining a lot of consideration due to their ability to increase degrees of freedom of an array, an aspect that allows for resolving of more sources than the number of sensor elements. In this paper direction of arrival estimation for coprime linear arrays using multiple signal classification algorithm is presented. Two super-resolution methods namely decompose and combine as well as unfolded coprime linear array are considered with an aim of putting forth an in-depth performance comparison of the two. Both methods analyses nonuniform linear array by first, decomposing it according to its coprime integer pair to form two independent sub-arrays 1 and 2, proceeded by application of the estimation algorithm. Although decompose and combine method ensures computational simplicity since it considers either of the decomposed sub-arrays separately, its resolution and performance efficiency is lower compared to unfolded coprime linear array method which uses the two sub-array data simultaneously thereby preserving the intrinsic mutual information of the array, an aspect that is lost in the former method.
机译:由于它们增加了阵列自由度的能力,稀疏阵列正在获得大量考虑因素,该方面允许解析比传感器元件的数量更多的来源。本文介绍了使用多个信号分类算法的CopRime线性阵列的到达方向。两种超分辨率方法即分解和组合以及展开的共同线性阵列被认为是旨在提出两者的深入性能比较。两种方法首先分析非均匀线性阵列,根据其Coprime整数对分解它以形成两个独立的子阵列1和2,通过应用估计算法进行。尽管分解和组合方法确保计算简单,因为它被分开考虑了分解的子阵列中的任一个,但与展开的共同阵列线性阵列方法相比,其分辨率和性能效率较低,其使用同时使用两个子阵列数据的展开的共同的线性阵列方法,从而保留了所属的相互信息阵列,在前一种方法中丢失的一个方面。

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