Deep Learning Strategies for 5G and LTE Spectrum Sensing Communication

https://doi.org/10.55529/jipirs.42.11.29

Authors

  • Suham A. Albderi Al-Furat Al-Awsat Technical University, 31003, Najaf, Iraq.

Keywords:

5G Innovations, Remote Sensor Networks (WSNs), Deep Learning Strategies, Execution Improvement, LTE Detecting.

Abstract

: The idea of 5G innovations is a prevalent instrument for the pace of transmission and gathering of data and the accessibility of permitting all over the place. Notwithstanding that the fifth era convergences will embrace a keen procedure for the data transmission process. Sending and getting signals work in high coordination in 5G networks, since this innovation arranges flexible, geostationary earthbound correspondence with other medium and little circuit correspondences with short steering in straight correspondences, and the correspondence incorporates signal processing as well as way finding. In this study the responsiveness improvement of the correspondence range will be tested by applying blended deep learning methods, in which the data cross-over will be diminished with the upgraded smart control. Utilizing blended deep learning methods, this study exhibits the huge difficulties presented by 5G transmissions in keenly detecting the LTE signal range and different data in 5G remote sensor networks. Way obstructions are recognized as the essential hindrance. The states of the correspondence framework ought to be considered while plotting the network and sensors for the fifth era.

Published

2024-02-17

How to Cite

Suham A. Albderi. (2024). Deep Learning Strategies for 5G and LTE Spectrum Sensing Communication. Journal of Image Processing and Intelligent Remote Sensing, 4(02), 11–29. https://doi.org/10.55529/jipirs.42.11.29

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