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  4. Unmanned Aerial Vehicle Position Tracking Using Nonlinear Autoregressive Exogenous Networks Learned from Proportional-Derivative Model-Based Guidance
 
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Unmanned Aerial Vehicle Position Tracking Using Nonlinear Autoregressive Exogenous Networks Learned from Proportional-Derivative Model-Based Guidance

Journal
Mathematical and Computational Applications
ISSN
2297-8747
Date Issued
2025-07-24
Author(s)
PAVÓN VALLEJOS, WILSON DAVID  
Facultad de Ciencias de la Ingeniería e Industrias  
Jorge Chavez
Ama Baduba Asiedu-Asante
GUFFANTI MARTINEZ, DIEGO ANDRES  
Facultad de Ciencias de la Ingeniería e Industrias  
DOI
https://doi.org/10.3390/mca30040078
Abstract
The growing demand for agile and reliable Unmanned Aerial Vehicles (UAVs) has spurred the advancement of advanced control strategies capable of ensuring stability and precision under nonlinear and uncertain flight conditions. This work addresses the challenge of accurately tracking UAV position by proposing a neural-network-based approach designed to replicate the behavior of classical control systems. A complete nonlinear model of the quadcopter was derived and linearized around a hovering point to design a traditional proportional derivative (PD) controller, which served as a baseline for training a nonlinear autoregressive exogenous (NARX) artificial neural network. The NARX model, selected for its feedback structure and ability to capture temporal dynamics, was trained to emulate the control signals of the PD controller under varied reference trajectories, including step, sinusoidal, and triangular inputs. The trained networks demonstrated performance comparable to the PD controller, particularly in the vertical axis, where the NARX model achieved a minimal Mean Squared Error (MSE) of 7.78×10−5 and an R2 value of 0.9852. These results confirm that the NARX neural network, trained via supervised learning to emulate a PD controller, can replicate and even improve classical control strategies in nonlinear scenarios, thereby enhancing robustness against dynamic changes and modeling uncertainties. This research contributes a scalable approach for integrating neural models into UAV control systems, offering a promising path toward adaptive and autonomous flight control architectures that maintain stability and accuracy in complex environments.
Subjects

NARX

UAV

quadcopter

neural network

time series

position tracking

MATLAB

PD controller

neural control

linearization

model-based control

system identification...

deep learning

flight control

autonomous systems

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