Modified QPSK Partition Algorithm Based on MAP Estimation for Probabilistically-Shaped 16-QAM
Jin Hu, Zhongliang Sun, Xuekai Xu, Mengqi Guo, Xizi Tang, Yueming Lu, and Yaojun Qiao

TL;DR
This paper proposes a MAP-based modified QPSK partition algorithm that improves phase noise estimation and channel capacity in probabilistically-shaped 16-QAM systems, addressing limitations of conventional methods.
Contribution
It introduces a joint optimization of amplitude decision threshold and filter weight using MAP estimation, enhancing performance in PS 16-QAM systems.
Findings
Reduces phase noise estimation error by nearly 50%.
Narrower gap to theoretical mutual information by over 0.1 bit/symbol.
Increases channel capacity by approximately 4% at SNR 8-10 dB.
Abstract
Probabilistic shaping (PS) is investigated as a potential technique to approach the Shannon limit. However, it has been proved that conventional carrier phase recovery (CPR) algorithm designed for uniform distribution may have extra penalty in PS systems. In this paper, we find that the performance of QPSK partition algorithm is degenerated when PS is implemented. To solve this issue, a modified QPSK partition algorithm that jointly optimizes the amplitude decision threshold and filter weight is proposed, where the optimization of decision threshold is based on maximum a posterior probability (MAP) estimation. Different from the conventional decision methods which commonly use Euclidean distance metric, the MAP-based decision introduces the statistical characteristics of the received signals to obtain an accurate amplitude partition. In addition, the filter weight is optimized for…
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