High-Precision Time Delay Calibration for Radio Astronomy Radars Based on Maximum Likelihood Iteration

Quanhua Liu;Bowen Cai;Xinliang Chen;Rui Zhu;Zhennan Liang
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Abstract

In the calibration of distributed radar for radio astronomy, deep space radio sources are commonly used as calibration sources to correct interarray delay errors, and accurate delay estimation is critical. Traditional correlation methods are limited by sampling frequency, achieving accuracy only at the sampling interval level. To achieve higher accuracy, subsample estimation is necessary. This letter proposes a precise delay calibration method using maximum likelihood iteration for subsample delay estimation. The proposed algorithm starts with the frequency domain features, first transforming the delay estimation problem into a phase estimation problem, and then calculating the likelihood function of the phase difference. A cost function is established based on the maximum likelihood criterion, and the optimal solution is obtained using the Newton iteration method. Compared to other algorithms, the proposed algorithm achieves superior accuracy in subsample delay estimation, meeting stringent calibration requirements in radio astronomy. Simulation and experimental results verify the validation of the algorithm.
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基于最大似然迭代的射电天文雷达高精度时延标定
在射电天文分布式雷达定标中,深空射电源常被用作校正阵列间时延误差的定标源,准确的时延估计至关重要。传统的相关方法受采样频率的限制,只能在采样区间水平上达到精度。为了达到更高的精度,需要进行子样本估计。本文提出了一种利用极大似然迭代进行子样本延迟估计的精确延迟校准方法。该算法从频域特征出发,首先将时延估计问题转化为相位估计问题,然后计算相位差的似然函数。基于极大似然准则建立成本函数,利用牛顿迭代法求出最优解。与其他算法相比,该算法在子样本延迟估计方面具有较高的精度,满足射电天文学中严格的校准要求。仿真和实验结果验证了算法的有效性。
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