Journal of Electromagnetic Analysis and Applications

Volume 6, Issue 11 (September 2014)

ISSN Print: 1942-0730   ISSN Online: 1942-0749

Google-based Impact Factor: 0.55  Citations  h5-index & Ranking

The Prediction of Propagation Loss of FM Radio Station Using Artificial Neural Network

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DOI: 10.4236/jemaa.2014.611036    4,208 Downloads   5,511 Views  Citations

ABSTRACT

In order to calculate the propagation loss of electromagnetic waves produced by a transmitter, a variety of models based on empirical and deterministic formulas are used. In this study, one of the artificial neural networks models, Levenberg-Marquardt algorithm, which is quite effective for predicting the propagation is used and the results obtained by this algorithm are compared with the simulation results based on ITU-R 1546 and Epstein-Peterson models. In this paper, the propagation loss of FM radio station using artificial neural networks models is studied depending on the Levenberg-Marquardt algorithm. For training the artificial neural network, as the input data; range (r), effective antenna height (h) and terrain irregularity (H) parameters are involved and measured values are treated as the output data. The good results obtained in the city area reveal that the artificial neural network is a very efficient method to compute models which integrate theoretical and experimental data. Meanwhile, the results show that an ANN model performs very well compared with theoretical and empiric propagation models with regard to prediction accuracy, complexity, and prediction time. By comparing the results, the RMSE for Neural Network Model using Levenberg-Marquardt is 9.57, and it is lower than that of classical propagation model using Epstein-Peterson for which RMSE is 10.26.

Share and Cite:

Ozdemir, A. , Alkan, M. , Kabak, M. , Gulsen, M. and Sazli, M. (2014) The Prediction of Propagation Loss of FM Radio Station Using Artificial Neural Network. Journal of Electromagnetic Analysis and Applications, 6, 358-365. doi: 10.4236/jemaa.2014.611036.

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