Abstract
This paper applies a deep learning approach to model the mechanism of path loss based on the path profile in urban propagation environments for 5G cellular communication systems. The proposed method combines the log-distance path loss model for line-of-sight propagation scenarios and a deep-learning-based model for non-line-of-sight cases. Simulation results show that the proposed path loss model outperforms the conventional models when operating in the 3.5 GHz frequency band. The standard deviation of prediction error was reduced by 34% when compared to the conventional models. To explain the internal behavior of the proposed deep-learning-based model, which is a black box in nature, eight relevant features were selected to model the path loss based on a linear regression approach. Simulation results show that the accuracy of the explanatory model reached 72% when it was used to explain the proposed deep learning model. Furthermore, the proposed deep learning model was also evaluated in a non-standalone 5G New Radio network in the urban environment of Taipei City. The real-world measurements show that the standard deviation of prediction error can be reduced by 30–43% when compared to the conventional models. In addition, the transparency of the proposed deep learning model reached 63% in the realistic 5G network.
Highlights
The emerging fifth-generation (5G) mobile communication systems are expected to bring a complete revolution in applications and experiences [1]
By applying deep learning methodology, this paper has presented a path loss model based on a profile along the direct propagation path between Tx–Rx pairs in urban environments for 5G cellular communication systems
The standard deviation of prediction error was reduced by 34% when compared to the conventional models
Summary
The emerging fifth-generation (5G) mobile communication systems are expected to bring a complete revolution in applications and experiences [1]. A deep learning approach to model radio propagation behaviors from satellite images was proposed in [11], where the path loss exponent and shadowing factor for the entire coverage area were estimated. In addition to point-to-point path loss prediction, Ahmadien et al proposed a method to evaluate path loss distribution in the coverage area directly from satellite images based on deep learning approaches [13]. Inspired by the Walfisch–Ikegami model, this paper proposes a path loss model based on the profile along the direct propagation path in urban environments for 5G cellular communication systems. A deep-learning-based path loss model utilizing path profiles is presented for 5G mobile communication systems in urban propagation environments;.
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