Autoencoder-Based Spatial Modulation for the Next Generation of Wireless Networks

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    2 Scopus citations

    Abstract

    Spatial Modulation (SM) has been proposed as a multiple-input-multiple-output (MIMO)-based technique to overcome the inter-channel interference experienced in conventional MIMO systems. It has been further shown that SM enhances energy efficiency and reduces the receiver’s complexity. Nevertheless, under high antenna correlation scenarios, the detection performance of the antenna indices degrades significantly. To address this critical concern, in this paper, we propose three autoencoder-based frameworks for spatial modulation. The first scenario, similar to conventional spatial modulation, trains the encoder for data modulation and the decoder for data demodulation as well as antenna index detection. The performance of this framework deteriorates in high antenna correlation scenarios. Therefore, two novel solutions are presented to embed the antenna index into the transmitted signal in order to reduce the receiver’s reliance on the channel conditions. The first framework adds a phase-shift keying-based antenna signature, while the other trains the encoder to learn an appropriate antenna index embedding. Simulation results show that the two enhanced frameworks result in a significantly enhanced performance, compared to conventional spatial modulation, in terms of block error rate and power efficiency under a high correlation setup (about 18 dB and 24 dB gain, respectively, at a Rician factor of 20 dB).

    Original languageBritish English
    Pages (from-to)1
    Number of pages1
    JournalIEEE Internet of Things Journal
    DOIs
    StateAccepted/In press - 2024

    Keywords

    • Adaptive arrays
    • Autoencoder
    • Correlation
    • Indexes
    • machine learning
    • MIMO
    • Modulation
    • Receiving antennas
    • spatial modulation
    • Symbols
    • Transmitting antennas

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