Low-Complexity Reliability-Based Equalization and Detection for OTFS-NOMA

单天线干扰消除 均衡(音频) 算法 干扰(通信) 计算机科学 最小均方误差 QR分解 计算复杂性理论 数学 频道(广播) 电信 解码方法 统计 特征向量 物理 量子力学 估计员
作者
Stephen McWade,Arman Farhang,Mark F. Flanagan
出处
期刊:IEEE Transactions on Communications [Institute of Electrical and Electronics Engineers]
卷期号:71 (11): 6779-6792
标识
DOI:10.1109/tcomm.2023.3305472
摘要

Orthogonal time frequency space (OTFS) modulation has recently emerged as a potential 6G candidate waveform which provides improved performance in high-mobility scenarios. In this paper we investigate the combination of OTFS with non-orthogonal multiple access (NOMA). Existing equalization and detection methods for OTFS-NOMA, such as minimum-mean-squared error with successive interference cancellation (MMSE-SIC), suffer from poor performance. Additionally, existing iterative methods for single-user OTFS based on low-complexity iterative least-squares solvers are not directly applicable to the NOMA scenario due to the presence of multi-user interference (MUI). Motivated by this, in this paper we propose a low-complexity method for equalization and detection for OTFS-NOMA. The proposed method uses a novel reliability zone (RZ) detection scheme which estimates the reliable symbols of the users and then uses interference cancellation to remove MUI. The thresholds for the RZ detector are optimized in a greedy manner to further improve detection performance. In order to optimize these thresholds, we modify the least squares with QR-factorization (LSQR) algorithm used for channel equalization to compute the post-equalization mean-squared error (MSE), and track the evolution of this MSE throughout the iterative detection process. Numerical results demonstrate the superiority of the proposed equalization and detection technique to the existing MMSE-SIC benchmark in terms of symbol error rate (SER).
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