考虑互耦的多核学习支持向量机DOA估计

M. Dehghanpour, V. Vakili, A. Farrokhi
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引用次数: 11

摘要

智能天线对信号的到达方向(DOA)的了解,使我们能够减少干扰的影响。本文研究了具有互耦效应的智能天线中基于多核学习svr的到达方向估计的效率。相互耦合效应会严重降低传统的DOA估计方法(如MUSIC)的性能,特别是在元素间距离很小的情况下,而基于svr的方法(如MKL支持向量回归方法)可以很好地处理这一问题。在本工作中,采用接收互阻抗法计算互耦矩阵。当阵列处于接收模式且单元间距离很小时,该方法比传统的互阻抗方法能更好地处理互耦效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DOA Estimation Using Multiple Kernel Learning SVM Considering Mutual Coupling
The Knowledge of Direction of Arrival (DOA) of the signal impinging on a smart antenna enables us to reduce the effect of interference. In this paper, we investigate efficiency of multiple kernel learning SVR-based direction of arrival estimation in a smart antenna with mutual coupling effect. Mutual coupling effect can degrade performance of traditional DOA estimation methods such as MUSIC severely especially when the distance between elements is very small, but SVR-based methods such as MKL support vector regression method can deal with this problem very well. In this work, receiving mutual impedance method is used to calculate mutual coupling matrix. This method can deal with mutual coupling effect better than conventional mutual impedance method when the array is in receiving mode and the distance between elements is very small.
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