Wind estimator using attitude measurement from quadrotor flight under wind disturbance
Date Issued
2022
Author(s)
DOI
10.1109/ICARES56907.2022.9993499
Abstract
There is a limitation to flying a quadrotor in the lowest layer of the atmosphere, the troposphere level. Thus, it is difficult to evaluate the performance of the quadrotor under the presence of wind. The main ohjective of this project is to validate the quadrotor control performance under the proposed wind prediction model. A wind estimator model was designed using neural network models to validate the quadrotor model with a proportional integral derivative(PID) controller, flying under external disturbance. The performance of the wind estimator model was evaluated based on error measurement. Thus, the actual flight data and the estimated data were compared and evaluated to obtain the best performance for the quadrotor flight control. The simulation results of the wind estimator signified that
the model has been successfully developed according to the set parameters. Thus, the outcome of this project shows that neural network fitting can be embedded inside the quadrotor and work together w ith the existing PIU controller to control the quadrotor in a robust environment.
the model has been successfully developed according to the set parameters. Thus, the outcome of this project shows that neural network fitting can be embedded inside the quadrotor and work together w ith the existing PIU controller to control the quadrotor in a robust environment.
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