Path loss prediction is essential for network planning in any wireless communication system. For cellular networks, it is usually achieved through extensive received signal power measurements in the target area. When the 3D model of an area is available, ray tracing simulations can be utilized; however, an important drawback of such an approach is the high computational complexity of the simulations. In this paper, we present a fundamentally different approach for path loss distribution prediction directly from 2D satellite images based on deep convolutional neural networks. While training process is time consuming and completed offline, inference can be done in real time. Another advantage of the proposed approach is that 3D model of the a...
Determining the channel model parameters of a wireless communication system, either by measurements ...
This paper presents and evaluates artificial neural network models used for macrocell path loss pred...
This paper analyzes the use of artificial neural networks (ANNs) for predicting the received power/p...
Optimal network planning for wireless communication systems requires the detailed knowledge of the c...
Accurate prediction of path loss is essential for the design and optimization of wireless communicat...
Path loss exponent and shadowing factor are among important wireless channel parameters. These param...
Deep learning (DL) has been recently leveraged for the inference of characteristics related to wirel...
This paper applies a deep learning approach to model the mechanism of path loss based on the path pr...
Tabular data and images have been used from machine learning models as two diverse types of inputs, ...
The performance of any Mobile Wireless Network (MWN) is dependent on the appropriate level of radio ...
In this paper, we propose a new algorithm for predicting the path loss exponent of outdoor millimete...
Path loss prediction is of great significance for the performance optimization of wireless networks....
It is critical to provide rapid deployment of robust and effective outdoor communication systems in ...
Wireless channel parameters of a region are required for a successful network planning. Sufficient i...
Path loss prediction in radio wave propagation models are often categorized as theoretical/physical,...
Determining the channel model parameters of a wireless communication system, either by measurements ...
This paper presents and evaluates artificial neural network models used for macrocell path loss pred...
This paper analyzes the use of artificial neural networks (ANNs) for predicting the received power/p...
Optimal network planning for wireless communication systems requires the detailed knowledge of the c...
Accurate prediction of path loss is essential for the design and optimization of wireless communicat...
Path loss exponent and shadowing factor are among important wireless channel parameters. These param...
Deep learning (DL) has been recently leveraged for the inference of characteristics related to wirel...
This paper applies a deep learning approach to model the mechanism of path loss based on the path pr...
Tabular data and images have been used from machine learning models as two diverse types of inputs, ...
The performance of any Mobile Wireless Network (MWN) is dependent on the appropriate level of radio ...
In this paper, we propose a new algorithm for predicting the path loss exponent of outdoor millimete...
Path loss prediction is of great significance for the performance optimization of wireless networks....
It is critical to provide rapid deployment of robust and effective outdoor communication systems in ...
Wireless channel parameters of a region are required for a successful network planning. Sufficient i...
Path loss prediction in radio wave propagation models are often categorized as theoretical/physical,...
Determining the channel model parameters of a wireless communication system, either by measurements ...
This paper presents and evaluates artificial neural network models used for macrocell path loss pred...
This paper analyzes the use of artificial neural networks (ANNs) for predicting the received power/p...