In this study, we consider the application of deep learning (DL) to tabu search (TS) detection in large multiple-input multiple-output (MIMO) systems. First, we propose a deep neural network architecture for symbol detection, termed the fast-convergence sparsely connected detection network (FS-Net), which is obtained by optimizing the prior detection networks called DetNet and ScNet. Then, we propose the DL-aided TS algorithm, in which the initial solution is approximated by the proposed FS-Net. Furthermore, in this algorithm, an adaptive early termination algorithm and a modified searching process are performed based on the predicted approximation error, which is determined from the FS-Net-based initial solution, so that the optimal solution can be reached earlier. The simulation results show that the proposed algorithm achieves approximately 90% complexity reduction for a $32 \times 32$ MIMO system with QPSK with respect to the existing TS algorithms, while maintaining almost the same performance.
翻译:在此研究中,我们考虑在大型多投入多输出(MIMO)系统中应用深学习(DL)来进行 Tapu 搜索。 首先,我们提出一个用于符号探测的深神经网络结构,称为快速趋同连接极少的探测网络(FS-Net),这是通过优化先前的探测网络(即DetNet和ScNet)获得的。然后,我们提出DL辅助TS算法,其中最初的解决方案与拟议的FS-Net相近。此外,在这一算法中,根据预测的近似误差进行适应性早期终止算法和修改的搜索过程,由基于FS-Net的初步解决办法确定,以便更早地达成最佳的解决方案。模拟结果表明,拟议的算法在现有的TS算法方面,与QPSK的QPSK系统相近90%的复杂度减少了32美元,同时保持几乎相同的性能。