Antenna array self-calibration algorithm with sensor location errors

Z. Xiaofei, Xu Dazhuan
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引用次数: 3

Abstract

The antenna array characteristics like sensor location, gain and phase response are rarely perfectly known in realistic situations. Self-calibration algorithms estimate both source DOAs and perturbed array response vector parameters simultaneously. In this paper calibration errors are usually assumed Io be small and a first order approximation to the perturbed array response vector is often used to simplify the estimation procedure. We introduce two classes of self-calibration algorithms for solving the sensor location error problem. This paper investigates the performance of these algorithms. Simulation results show that iterative approach and MAP-NSF algorithm are much better than MUSIC algorithm, and the iterative approach is preferred. But the iterative approach is very sensitive to initialization. A novel algorithm, using the MAP-NSF algorithm results as the input to the iterative approach, is proposed to eliminate sensor location errors and remove the sensitivity to initialization. Further simulation results demonstrate the improved performance of the new approach.
考虑传感器定位误差的天线阵列自校准算法
在实际情况下,天线阵的传感器位置、增益和相位响应等特性很少能被完全了解。自校准算法同时估计源doa和摄动阵列响应向量参数。在本文中,通常假设校准误差很小,并且通常使用摄动阵列响应向量的一阶近似来简化估计过程。介绍了两类用于解决传感器定位误差问题的自校准算法。本文对这些算法的性能进行了研究。仿真结果表明,迭代法和MAP-NSF算法均优于MUSIC算法,且优选迭代法。但是迭代方法对初始化非常敏感。提出了一种新的算法,利用MAP-NSF算法的结果作为迭代法的输入,消除了传感器的定位误差和初始化的敏感性。进一步的仿真结果证明了新方法的改进性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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