Online Learning and Control for Data-Augmented Quadrotor Model

Date issued

2024

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Abstract

The ability to adapt to changing conditions is a key feature of a successful autonomous system. In this work, we use the Recursive Gaussian Processes (RGP) for identification of the quadrotor air drag model online, without the need to precollect training data. The identified drag model then augments a physics-based model of the quadrotor dynamics, which allows more accurate quadrotor state prediction with increased ability to adapt to changing conditions. This data-augmented physics-based model is utilized for precise quadrotor trajectory tracking using the suitably modified Model Predictive Control (MPC) algorithm. The proposed modelling and control approach is evaluated using the Gazebo simulator and it is shown that the proposed approach tracks a desired trajectory with a higher accuracy compared to the MPC with the non-augmented (purely physics-based) model.

Description

Subject(s)

data-augmented physics-based model, adaptive control, Gaussian process, predictive control, quadrotor, Gazebo

Citation