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Spatio-Temporal Coherence of mmWave/THz Channel Characteristics and Their Forecasting Using Video Frame Prediction Techniques

Author

Listed:
  • Vladislav Prosvirov

    (Moscow Institute of Electronics and Mathematics, HSE University, 123458 Moscow, Russia)

  • Amjad Ali

    (Moscow Institute of Electronics and Mathematics, HSE University, 123458 Moscow, Russia)

  • Abdukodir Khakimov

    (Applied Mathematics & Communications Technology Institute, Peoples’ Friendship University of Russia (RUDN University), 117198 Moscow, Russia)

  • Yevgeni Koucheryavy

    (Moscow Institute of Electronics and Mathematics, HSE University, 123458 Moscow, Russia)

Abstract

Channel state information in millimeter wave (mmWave) and terahertz (THz) communications systems is vital for various tasks ranging from planning the optimal locations of BSs to efficient beam tracking mechanisms to handover design. Due to the use of large-scale phased antenna arrays and high sensitivity to environmental geometry and materials, precise propagation models for these bands are obtained via ray-tracing modeling. However, the propagation conditions in mmWave/THz systems may theoretically change at very small distances, that is, 1 mm–1 μ m, which requires extreme computational effort for modeling. In this paper, we first will assess the effective correlation distances in mmWave/THz systems for different outdoor scenarios, user mobility patterns, and line-of-sight (LoS) and non-LoS (nLoS) conditions. As the metrics of interest, we utilize the angle of arrival/departure (AoA/AoD) and path loss of the first few strongest rays. Then, to reduce the computational efforts required for the ray-tracing procedure, we propose a methodology for the extrapolation and interpolation of these metrics based on the convolutional long short-term memory (ConvLSTM) model. The proposed methodology is based on a special representation of the channel state information in a form suitable for state-of-the-art video enhancement machine learning (ML) techniques, which allows for the use of their powerful prediction capabilities. To assess the prediction performance of the ConvLSTM model, we utilize precision and recall as the main metrics of interest. Our numerical results demonstrate that the channel state correlation in AoA/AoD parameters is preserved up until approximately 0.3–0.6 m, which is 300–600 times larger than the wavelength at 300 GHz. The use of a ConvLSTM model allows us to accurately predict AoA and AoD angles up to the 0.6 m distance with AoA being characterized by a higher mean squared error (MSE). Our results can be utilized to speed up ray-tracing simulations by selecting the grid step size, resulting in the desired trade-off between modeling accuracy and computational time. Additionally, it can also be utilized to improve beam tracking in mmWave/THz systems via a selection of the time step between beam realignment procedures.

Suggested Citation

  • Vladislav Prosvirov & Amjad Ali & Abdukodir Khakimov & Yevgeni Koucheryavy, 2023. "Spatio-Temporal Coherence of mmWave/THz Channel Characteristics and Their Forecasting Using Video Frame Prediction Techniques," Mathematics, MDPI, vol. 11(17), pages 1-18, August.
  • Handle: RePEc:gam:jmathe:v:11:y:2023:i:17:p:3634-:d:1222912
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    References listed on IDEAS

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    1. Elizaveta Golos & Anastasia Daraseliya & Eduard Sopin & Vyacheslav Begishev & Yuliya Gaidamaka, 2023. "Optimizing Service Areas in 6G mmWave/THz Systems with Dual Blockage and Micromobility," Mathematics, MDPI, vol. 11(4), pages 1-13, February.
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