A variety of wireless channel estimation methods, e.g., MUSIC and ESPRIT, rely on prior knowledge of the model order. Therefore, it is important to correctly estimate the number of multipath components (MPCs) which compose such channels. However, environments with many scatterers may generate MPCs which are closely spaced. This clustering of MPCs in addition to noise makes the model order selection task difficult in practice to currently known algorithms. In this paper, we exploit the multidimensional characteristics of MIMO orthogonal frequency division multiplexing (OFDM) systems and propose a machine learning (ML) method capable of determining the number of MPCs with a higher accuracy than state of the art methods in almost coherent scenarios. Moreover, our results show that our proposed ML method has an enhanced reliability.
翻译:多种无线频道估计方法,例如MUSIC和ESPRIT, 都依靠以前对模型顺序的了解,因此,必须正确估计组成这种频道的多路径部件的数量,然而,许多撒布器的环境可能会产生密密密的多路部件。除噪音外,这种多路线路的组合还使得目前已知的算法难以实际执行示范订单选择任务。在本文中,我们利用了MOIMO或多轨道频率分多路化(OFDM)系统的多维特性,并提出一种机器学习方法,能够在几乎一致的情景下以比先进方法更精确的方式确定多路部件的数量。此外,我们的结果显示,我们提议的多路计算法提高了可靠性。