Path loss prediction in radio wave propagation models are often categorized as theoretical/physical, empirical or a hybrid combination. Theoretical propagation models rely more on the physical behavior of radio waves while empirical models are based on actual field strength measurements in a particular environment. Consequently, the equations for theoretical models are based on physics while those for empirical models are based on statistical analysis of the gathered data. While physical models can be adapted to any type of environment, they are known for their computational complexity since they consider the path profile to each and every point in a given area. Empirical models are attractive for their computational efficiency but they may...
Path loss prediction is of great significance for the performance optimization of wireless networks....
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 in radio wave propagation models are often categorized as theoretical/physical,...
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...
Radio network planning needs proper channel characterization and hence approximation of path loss pr...
In Long Range (LoRa) wireless communication, the transmitted signals may experience loss ...
Modern cellular communication networks are already being perturbed by large and steadily increasing ...
In this paper, an optimal model is developed for path loss predictions using the Feed-Forward Neural...
The radio propagation loss prediction model is essential for maritime communication. The oceanic tro...
Large-scale fading models play an important role in estimating radio coverage, optimizing base stati...
Path loss prediction is an important process in radio network planning and optimization because it h...
One of the most critical problems in a communication system is losing information between the transm...
Abstract This article presents the analysis of a hybrid, error correction-based, neural network mode...
Path loss prediction is of great significance for the performance optimization of wireless networks....
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 in radio wave propagation models are often categorized as theoretical/physical,...
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...
Radio network planning needs proper channel characterization and hence approximation of path loss pr...
In Long Range (LoRa) wireless communication, the transmitted signals may experience loss ...
Modern cellular communication networks are already being perturbed by large and steadily increasing ...
In this paper, an optimal model is developed for path loss predictions using the Feed-Forward Neural...
The radio propagation loss prediction model is essential for maritime communication. The oceanic tro...
Large-scale fading models play an important role in estimating radio coverage, optimizing base stati...
Path loss prediction is an important process in radio network planning and optimization because it h...
One of the most critical problems in a communication system is losing information between the transm...
Abstract This article presents the analysis of a hybrid, error correction-based, neural network mode...
Path loss prediction is of great significance for the performance optimization of wireless networks....
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...