Abstract This article presents the analysis of a hybrid, error correction-based, neural network model to predict the path loss for suburban areas at 800 MHz and 2600 MHz, obtained by combining empirical propagation models, ECC-33, Ericsson 9999, Okumura Hata, and 3GPP's TR 36.942, with a feedforward Artificial Neural Network (ANN). The performance of the hybrid model was compared against regular versions of the empirical models and a simple neural network fed with input parameters commonly used in related works. Results were compared with data obtained by measurements performed in the vicinity of the Federal University of Rio Grande do Norte (UFRN), in the city of Natal, Brazil. In the end, the hybrid neural network obtained the lowest RMSE...
Objectives: Radio propagation models are used to predict signal strength in order to characterize th...
This paper applies a deep learning approach to model the mechanism of path loss based on the path pr...
This study sets out an empirical hybrid autoregressive integrated moving average (ARIMA) and artific...
Doctor of Philosophy in Electronic Engineering. University of KwaZulu-Natal. Durban, 2018.Prediction...
Modern cellular communication networks are already being perturbed by large and steadily increasing ...
This study proposes Artificial Intelligence AI based path loss prediction models for the suburban ar...
In this paper, an optimal model is developed for path loss predictions using the Feed-Forward Neural...
This paper presents and evaluates artificial neural network models used for macrocell path loss pred...
Path loss prediction in radio wave propagation models are often categorized as theoretical/physical,...
A new method based on feed-forward neural networks for propagation loss prediction in urban environ...
Radio network planning needs proper channel characterization and hence approximation of path loss pr...
Large-scale fading models play an important role in estimating radio coverage, optimizing base stati...
One of the most critical problems in a communication system is losing information between the transm...
This paper analyzes the use of artificial neural networks (ANNs) for predicting the received power/p...
This work proposes the use of neural networks in path loss prediction, an important part in mobile ...
Objectives: Radio propagation models are used to predict signal strength in order to characterize th...
This paper applies a deep learning approach to model the mechanism of path loss based on the path pr...
This study sets out an empirical hybrid autoregressive integrated moving average (ARIMA) and artific...
Doctor of Philosophy in Electronic Engineering. University of KwaZulu-Natal. Durban, 2018.Prediction...
Modern cellular communication networks are already being perturbed by large and steadily increasing ...
This study proposes Artificial Intelligence AI based path loss prediction models for the suburban ar...
In this paper, an optimal model is developed for path loss predictions using the Feed-Forward Neural...
This paper presents and evaluates artificial neural network models used for macrocell path loss pred...
Path loss prediction in radio wave propagation models are often categorized as theoretical/physical,...
A new method based on feed-forward neural networks for propagation loss prediction in urban environ...
Radio network planning needs proper channel characterization and hence approximation of path loss pr...
Large-scale fading models play an important role in estimating radio coverage, optimizing base stati...
One of the most critical problems in a communication system is losing information between the transm...
This paper analyzes the use of artificial neural networks (ANNs) for predicting the received power/p...
This work proposes the use of neural networks in path loss prediction, an important part in mobile ...
Objectives: Radio propagation models are used to predict signal strength in order to characterize th...
This paper applies a deep learning approach to model the mechanism of path loss based on the path pr...
This study sets out an empirical hybrid autoregressive integrated moving average (ARIMA) and artific...