采用SAGE算法进行阵列自标定

Pei-Jung Chung, Shuang Wan
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引用次数: 16

摘要

大多数现有的阵列处理算法的性能严重依赖于阵列流形的精确知识,而这是由单个传感器特性和阵列结构决定的。自校准技术的一个主要挑战是由于额外的扰动参数而增加的计算负担。本文提出了一种新的阵列自校准方法。我们应用了众所周知的数值方法,即空间交替广义EM算法(SAGE)来简化寻找最大似然(ML)估计所需的多维搜索过程。仿真结果表明,该算法优于基于小扰动假设的现有方法。此外,该算法在传感器位置误差较大和信号定位较近的关键场景下仍然具有鲁棒性。
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Array self-calibration using SAGE algorithm
The performance of most existing array processing algorithms relies heavily on the precise knowledge of array manifold, which is decided by individual sensor characteristics and array configuration. A major challenge for self-calibration techniques is the increased computational burden due to additional perturbation parameters. In this contribution, a novel procedure for array self-calibration is presented. We apply the well known numerical method, the Space Alternating Generalized EM algorithm (SAGE), to simplify the multi-dimensional search procedure required for finding maximum likelihood (ML) estimates. Simulation shows that the proposed algorithm outperforms existing methods that are based on the small perturbation assumption. Furthermore, the proposed algorithm remain robust in critical scenarios including large sensor position errors and closely located signals.
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