Machine Learning Assisted Adaptive Index Modulation for mmWave Communications

Haochen Liu, Siyao Lu, Mohammed El-Hajjar, Lie-Liang Yang
2020 IEEE Open Journal of the Communications Society  
In this article, we propose an orthogonal frequency-division multiplexing system supported by the compressed sensing assisted index modulation, termed as (OFDM-CSIM), applied to millimeterwave (mmWave) communications. In the OFDM-CSIM mmWave system, information is conveyed not only by the classic constellation symbols but also by the on/off status of subcarriers, where the size of constellation symbols and the number of active subcarriers can be beneficially configured for maximizing the
more » ... s throughput. We conceive a machine learning (ML) assisted adaptive OFDM-CSIM mmWave system, which simultaneously benefits from the OFDM with index modulation (IM), compressed sensing (CS) and the hybrid beamforming techniques. Specifically, a ML-assisted link adaptation scheme is designed based on the k-nearest neighbors (k-NN) algorithm with the objective to maximize the system's throughput. Our studies show that the proposed ML-assisted link adaptation is capable of providing higher throughput than the conventional threshold-based link adaptation when different antenna structures are considered. Furthermore, the achievable data rates of four types of antenna arrays, including uniform linear array (ULA), uniform rectangular planar array (URPA), uniform circle planar array (UCPA) and uniform cylindrical array (UCYA), are investigated and compared over mmWave channels. The simulation results show that the UCYA achieves the highest data rate among these antenna arrays. INDEX TERMS OFDM, mmwave, index modulation, compressed sensing, hybrid beamforming, linkadaptation, machine learning, k-nearest neighbour.
doi:10.1109/ojcoms.2020.3024724 fatcat:5smlvvkxnjbqzgw7zgqtd4m7lq