A UAV-Swarm-Communication Model Using a Machine-Learning Approach for Search-and-Rescue Applications

Author:

Khalil Hisham,Rahman Saeed UrORCID,Ullah InamORCID,Khan InayatORCID,Alghadhban Abdulaziz Jarallah,Al-Adhaileh Mosleh HmoudORCID,Ali GauharORCID,ElAffendi MohammedORCID

Abstract

This paper presents a UAV-swarm-communication model using a machine-learning approach for search-and-rescue applications. Firstly, regarding the communication of UAVs, the receive signal strength (RSS) and power loss have been modeled using random forest regression, and the mathematical representation of the channel matrix has also been discussed. The second part consisted of swarm control modeling of UAVs; however, a dataset for five types of triangular swarm formations was generated, and K-means clustering was applied to predict the cluster. In order to obtain the correct swarm formation, the dendrogram of all types was investigated. Finally, the heat map and contour were plotted for all kinds of swarm clusters. Furthermore, it was observed that the RSS of proposed swarms had good agreement with swarm distances.

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Aerospace Engineering,Information Systems,Control and Systems Engineering

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