In a K-best detector for multiple-input-multiple-output(MIMO) systems, the value of K needs to be sufficiently large to achieve near-maximum-likelihood (ML) performance. By treating K as a variable that can be adjusted according to a fitting function of some learnable coefficients, an intelligent MIMO detection network based on deep neural networks (DNN) is proposed to reduce complexity of the detection algorithm with little performance degradation. In particular, the proposed intelligent detection algorithm uses meta learning to learn the coefficients of the fitting function for K to circumvent the problem of learning K directly. The idea of network fusion is used to combine the learning results of the meta learning component networks. Simulation results show that the proposed scheme achieves near-ML detection performance while its complexity is close to that of linear detectors. Besides, it also exhibits strong ability of fast training.
翻译:在多投入-多产出(MIMO)系统中,K-最佳检测器对多投入-多产出(MIMO)系统的价值必须足够大,以达到接近最大相似性(ML)的性能。通过将K作为可按某些可学习系数的适当功能加以调整的变量来对待,建议基于深层神经网络的智能MIMO检测网络来降低探测算法的复杂性,而性能不易退化。特别是,拟议的智能检测算法利用元学学习来学习K适合功能的系数,以绕过直接学习K的问题。网络融合的概念被用来将元学习元构件网络的学习结果结合起来。模拟结果表明,拟议的方案在接近线性探测器的复杂性的同时,实现了接近ML的检测性能。此外,它还表现出很强的快速培训能力。