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Fast and robust adaptive beamforming algorithms for large-scale arrays with small samples

机译:具有小型样品的大型阵列的快速和鲁棒自适应波束形成算法

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摘要

The adaptive beamformer of large-scale sensor array mainly suffers from two limits. One limit is an insufficient number of training snapshots, which usually results in an ill-posed sample covariance matrix in many real applications. The other limit is the high computation complexity of the beamformer that severely restricts its online processing. To overcome these two limits, two fast and robust adaptive beam-forming algorithms are proposed in this paper, which refers to the linear kernel approaches and formulates the weight vector as a linear combination of the training samples and the signal steering vector. The proposed algorithms only need to calculate a low-dimensional combination vector instead of the high-dimensional adaptive weight vector, which remarkably reduces the computation complexity. Moreover, regularization techniques are utilized to suppress the excessive variation of the combination vector caused by an underdetermined estimation of the Gram matrix. Experimental results show that the proposed algorithms achieve better performance and lower computation complexity than algorithms in the literature. Especially, like the kernel approaches, the proposed algorithms achieve good performance under the small sample case.
机译:大型传感器阵列的自适应波束形成器主要遭受两个限制。一个限制是培训快照数量不足,这通常会导致许多真实应用中的一个不良样本协方差矩阵。另一个限制是波束形成器的高计算复杂度严重限制其在线处理。为了克服这两个限制,本文提出了两个快速且鲁棒的自适应光束形成算法,这是指线性内核接近并将重量向量作为训练样本和信号转向载体的线性组合。所提出的算法仅需要计算低维组合矢量而不是高维自适应权重向量,这显着降低了计算复杂度。此外,利用正则化技术来抑制由克矩阵的未确定估计引起的组合载体的过度变化。实验结果表明,所提出的算法在文献中的算法中实现了更好的性能和较低的计算复杂性。特别是,如核接近,所提出的算法在小型样本情况下实现了良好的性能。

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