DOA Tracking Algorithm for the Time-varying Number of Signal Sources

Yulong Gao, Yanping Chen, Huan Wang, Shaochuan Wu
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Abstract

At present, sparse Bayesian learning (SBL) is introduced into direction of arrival (DOA) estimation for both coherent and incoherent signals. Instead of directly extending DOA estimation to DOA tracking, we construct an array data model including DOA change of adjacent time to decrease computational complexity and avoid grid effect. Thus, we regard DOA tracking as a parameter estimation problem in terms of Taylor expansion and Bayesian rule. Owing to the existence of hidden variables, we adopt the Expectation Maximization (EM) algorithm to calculate the DOA change. More importantly, we realize DOA tracking by utilizing the estimated signal power and noise power when the number of signal sources varies with time. The proposed method is numerically evaluated with an assumption of uniform linear array. The results show that the proposed algorithm has higher tracking accuracy over conventional methods.
时变信号源数的DOA跟踪算法
将DOA估计直接扩展到DOA跟踪,构建了包含相邻时间DOA变化的数组数据模型,降低了计算复杂度,避免了网格效应。因此,我们将DOA跟踪看作是一个基于Taylor展开和Bayesian规则的参数估计问题。由于存在隐变量,我们采用期望最大化(EM)算法来计算DOA变化。更重要的是,我们利用估计的信号源数量随时间变化时的信号功率和噪声功率来实现DOA跟踪。在均匀线阵假设下,对该方法进行了数值验证。结果表明,该算法比传统方法具有更高的跟踪精度。
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