Litcius/Paper detail

Neural Network Based Model Predictive Control for a Quadrotor UAV

Bailun Jiang, Boyang Li, Weifeng Zhou, Li-Yu Lo, Chih‐Keng Chen, Chih‐Yung Wen

2022Aerospace62 citationsDOIOpen Access PDF

Abstract

A dynamic model that considers both linear and complex nonlinear effects extensively benefits the model-based controller development. However, predicting a detailed aerodynamic model with good accuracy for unmanned aerial vehicles (UAVs) is challenging due to their irregular shape and low Reynolds number behavior. This work proposes an approach to model the full translational dynamics of a quadrotor UAV by a feedforward neural network, which is adopted as the prediction model in a model predictive controller (MPC) for precise position control. The raw flight data are collected by tracking various pre-designed trajectories with PX4 autopilot. The neural network model is trained to predict the linear accelerations from the flight log. The neural network-based model predictive controller is then implemented with the automatic control and dynamic optimization toolkit (ACADO) to achieve real-time online optimization. Software in the loop (SITL) simulation and indoor flight experiments are conducted to verify the controller performance. The results indicate that the proposed controller leads to a 40% reduction in the average trajectory tracking error compared to the traditional PID controller.

Topics & Concepts

AutopilotControl theory (sociology)Model predictive controlArtificial neural networkController (irrigation)PID controllerComputer scienceFeed forwardOnline modelTrajectoryControl engineeringAerodynamicsNonlinear systemSimulationEngineeringArtificial intelligenceControl (management)AgronomyAerospace engineeringStatisticsQuantum mechanicsTemperature controlMathematicsAstronomyPhysicsBiologyAdvanced Control Systems OptimizationAdaptive Control of Nonlinear SystemsFault Detection and Control Systems