In this paper, we propose a new algorithm for predicting the path loss exponent of outdoor millimeter-wave band channels through deep learning method. The proposed algorithm has the advantage of requiring less inference time compared to existing deterministic channel models while concretely considering the topographical characteristics. We used three-dimensional ray tracing to generate the outdoor millimeter-wave band channel and path loss exponent. We trained a neural network with generated path loss exponent. To evaluate the performance of the proposed method, we analyzed the influence of the hyperparameters and environmental features, for example, building density and average distance from the transmitter.N
Unlimited access to information and data sharing wherever and at any time for anyone and anything is...
Path loss prediction is essential for network planning in any wireless communication system. For cel...
Accurate prediction of path loss is essential for the design and optimization of wireless communicat...
Deep learning (DL) has been recently leveraged for the inference of characteristics related to wirel...
This paper discusses the received power prediction of millimeter-wave by machine learning when a use...
Optimal network planning for wireless communication systems requires the detailed knowledge of the c...
Large-scale fading models play an important role in estimating radio coverage, optimizing base stati...
Path loss exponent and shadowing factor are among important wireless channel parameters. These param...
Path loss prediction in radio wave propagation models are often categorized as theoretical/physical,...
This paper applies a deep learning approach to model the mechanism of path loss based on the path pr...
Statistical channel models are instrumental to design and evaluate wireless communication systems. I...
The radio propagation prediction is essential for communication coverage calculations, and also play...
This paper proposes a procedure of predicting channel characteristics based on a well-known machine ...
This paper analyzes the use of artificial neural networks (ANNs) for predicting the received power/p...
End-to-end network performance evaluation and dynamic resource provisioning require models that are ...
Unlimited access to information and data sharing wherever and at any time for anyone and anything is...
Path loss prediction is essential for network planning in any wireless communication system. For cel...
Accurate prediction of path loss is essential for the design and optimization of wireless communicat...
Deep learning (DL) has been recently leveraged for the inference of characteristics related to wirel...
This paper discusses the received power prediction of millimeter-wave by machine learning when a use...
Optimal network planning for wireless communication systems requires the detailed knowledge of the c...
Large-scale fading models play an important role in estimating radio coverage, optimizing base stati...
Path loss exponent and shadowing factor are among important wireless channel parameters. These param...
Path loss prediction in radio wave propagation models are often categorized as theoretical/physical,...
This paper applies a deep learning approach to model the mechanism of path loss based on the path pr...
Statistical channel models are instrumental to design and evaluate wireless communication systems. I...
The radio propagation prediction is essential for communication coverage calculations, and also play...
This paper proposes a procedure of predicting channel characteristics based on a well-known machine ...
This paper analyzes the use of artificial neural networks (ANNs) for predicting the received power/p...
End-to-end network performance evaluation and dynamic resource provisioning require models that are ...
Unlimited access to information and data sharing wherever and at any time for anyone and anything is...
Path loss prediction is essential for network planning in any wireless communication system. For cel...
Accurate prediction of path loss is essential for the design and optimization of wireless communicat...