ITLGSPMLNov 24, 2019

Machine Learning-based Signal Detection for PMH Signals in Load-modulated MIMO System

arXiv:1911.13238v13 citations
Originality Incremental advance
AI Analysis

This work addresses a specific bottleneck in wireless communication systems by reducing detection complexity for PMH signals, which is incremental but offers practical improvements for MIMO transmitter efficiency.

The paper tackles the problem of high complexity in detecting Phase Modulation on the Hypersphere (PMH) signals in load-modulated MIMO systems without precise channel state information, proposing two machine learning-based schemes (HEM-ML and HEM-KD) that achieve comparable detection results to optimal ML detectors with significantly reduced computational complexity.

Phase Modulation on the Hypersphere (PMH) is a power efficient modulation scheme for the \textit{load-modulated} multiple-input multiple-output (MIMO) transmitters with central power amplifiers (CPA). However, it is difficult to obtain the precise channel state information (CSI), and the traditional optimal maximum likelihood (ML) detection scheme incurs high complexity which increases exponentially with the number of antennas and the number of bits carried per antenna in the PMH modulation. To detect the PMH signals without knowing the prior CSI, we first propose a signal detection scheme, termed as the hypersphere clustering scheme based on the expectation maximization (EM) algorithm with maximum likelihood detection (HEM-ML). By leveraging machine learning, the proposed detection scheme can accurately obtain information of the channel from a few of the received symbols with little resource cost and achieve comparable detection results as that of the optimal ML detector. To further reduce the computational complexity in the ML detection in HEM-ML, we also propose the second signal detection scheme, termed as the hypersphere clustering scheme based on the EM algorithm with KD-tree detection (HEM-KD). The CSI obtained from the EM algorithm is used to build a spatial KD-tree receiver codebook and the signal detection problem can be transformed into a nearest neighbor search (NNS) problem. The detection complexity of HEM-KD is significantly reduced without any detection performance loss as compared to HEM-ML. Extensive simulation results verify the effectiveness of our proposed detection schemes.

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