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Robust and Fast Coarse Frequency Offset Estimation Based on Frequency-Domain Skewness for Coherent DSCM Systems under Severe Bandwidth Limitations

OPTICS LETTERS(2024)

Harbin Inst Technol | Huawei Technol Co Ltd

Cited 0|Views1
Abstract
A novel, to the best of our knowledge, frequency offset estimation (FOE) scheme is proposed and demonstrated for coherent digital subcarrier multiplexing (DSCM) systems, where frequency offset (FO) leads to severe filtering damage of subcarriers due to bandwidth limitations. The scheme exploits the symmetry of the signal spectrum, which naturally arises from the transmitter's frequency response and introduces frequency skewness as a cost function to search for FO. To achieve fast FOE, the false position (FP) method is employed to iteratively compute frequency shifts. Experimental results show that within 80% of the cumulative distribution function (CDF), the proposed scheme (with an FFT size of 2048) achieves FOE in just three iterations. In the 4-subcarrier system, the maximum error is less than 250 MHz, while in the 6- and 8-subcarrier systems, the maximum error is less than 80 MHz. In a 6-subcarrier system, the proposed scheme exhibits stable performance under different FO values and received optical power (ROP), even under severe filtering conditions where existing schemes tend to degrade or fail. Therefore, the proposed scheme provides a robust FOE solution for coherent digital subcarrier multiplexing systems with strong filtering impairments. (c) 2024 Optica Publishing Group. All rights, including for text and data mining (TDM), Artificial Intelligence (AI) training, and similar technologies, are reserved.
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要点】:提出一种基于频域偏斜度的频率偏移估计方法,适用于带宽受限下的相干数字子载波复用系统,实现稳健且快速的频率偏移估计。

方法】:利用信号频谱的对称性,引入频率偏斜度作为搜索频率偏移的成本函数,采用伪位置(False Position)方法迭代计算频率偏移。

实验】:在FFT大小为2048的条件下,通过实验验证了所提方法在三次迭代内即可完成频率偏移估计,最大误差在4子载波系统中小于250 MHz,在6子载波和8子载波系统中小于80 MHz,且在6子载波系统中对不同频率偏移和接收光功率表现出稳定性能。实验使用的数据集未在文中明确提及。