A Python Tool to Predict Wireless Network Signals in Indoor Environments using Neural Networks
Código em python para previsão propagação de sinais em ambientes indoor utilizando RNA's (Redes Neurais artificiais)
Keywords:
Signal prediction , propagation model , neural networks , perceptron’s .Abstract
Abstract — The use of neural networks proved to be effective in creating more accurate predictive models compared to traditional approaches. The Python tool developed made it possible to train and adjust these models based on the information collected, taking into account factors such as the physical structure of the site, obstacles present and building materials. The results obtained during the research indicated significant improvements in prediction accuracy compared to conventional methods. This suggests great potential for the practical use of the tool in real-world scenarios, such as the planning and optimisation of indoor wireless networks, contributing to more stable and reliable connectivity indoors. The aim of this work was to create a Python-based tool that uses neural networks to predict wireless network signals in indoor environments. The innovative approach, which combines mapping and field measurements, demonstrated an increase in the accuracy of predictions, promoting advances in the efficiency and reliability of wireless networks in indoor spaces.
Downloads
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2025 SET INTERNATIONAL JOURNAL OF BROADCAST ENGINEERING

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Copyright Transfer Agreement – Cover Letter
The Copyright Transfer Agreement – Cover Letter must be submitted together with the article.
The Corresponding Author must, on behalf of all co-authors, complete all the required information, check the boxes, print=, SIGN and scan the (signed) document.
The Copyright Transfer Agreement – cover Letter must also be forwarded in PDF format. Template available at: