International Journal of Engineering and Management Research
  • Year: 2024
  • Volume: 14
  • Issue: 2

Mathematical and Machine Learning Based Methods for UAV Simulation: A Systematic Literature Review

  • Author:
  • Shehan Amarasooriya1,*, Damitha Sandaruwan2
  • Total Page Count: 8
  • Page Number: 126 to 133

1Department of Statistics & Computer Science, Faculty of Science, University of Kelaniya, Sri Lanka

2University of Colombo, School of Computing, 35 Reid Ave, Colombo-00700, Sri Lanka

*Corresponding Author: d.shehan.amarasooriya@gmail.com

Online Published on 25 June, 2024.

Abstract

Unmanned aerial vehicles (UAVs), frequently called drones, have become highly useful assets in various industries such as surveillance, transportation, and agriculture. Understanding and evaluating drone behavior is difficult because of the intricate interplay of factors such as velocity, altitude, remote controller input and flight path. Therefore, proficient, and knowledgeable workers are required for efficient drone operations. It is essential to have strong training programs for drone pilots to satisfy these expectations. The inclusion of drone simulators is a vital component of these training programs. Drone dynamics simulations are of great importance in several industries since they allow researchers to design and evaluate drones in intricate situations that would otherwise be dangerous or impractical. This paper examines different drone dynamic models based on principles of Newtonian fluid dynamics. The focus of this study is specifically on fundamental elements such as force, gravity, propeller characteristics, and air density. Moreover, this research examines the utilization of machine learning approaches for simulating drone dynamics. This study analyzes different simulation models and conducts a comparison to find areas of research that have not been addressed. After identifying these gaps, the research examines potential ways to address the drawbacks of current simulation models in the future. This research aims to offer valuable insights to future academics who are interested in constructing customized drone simulators. This work works as a core resource, directing the building of customized drone simulators for different uses.

Keywords

Machine Learning, Drone, Simulation, UAV, Newtonian and Fluid Dynamics