Litcius/Paper detail

Model Predictive Control Technique for Ducted Fan Aerial Vehicles Using Physics-Informed Machine Learning

Tayyab Manzoor, Hailong Pei, Zhongqi Sun, Zihuan Cheng

2022Drones20 citationsDOIOpen Access PDF

Abstract

This paper proposes a model predictive control (MPC) approach for ducted fan aerial robots using physics-informed machine learning (ML), where the task is to fully exploit the capabilities of the predictive control design with an accurate dynamic model by means of a hybrid modeling technique. For this purpose, an indigenously developed ducted fan miniature aerial vehicle with adequate flying capabilities is used. The physics-informed dynamical model is derived offline by considering the forces and moments acting on the platform. On the basis of the physics-informed model, a data-driven ML approach called adaptive sparse identification of nonlinear dynamics is utilized for model identification, estimation, and correction online. Thereafter, an MPC-based optimization problem is computed by updating the physics-informed states with the physics-informed ML model at each step, yielding an effective control performance. Closed-loop stability and recursive feasibility are ensured under sufficient conditions. Finally, a simulation study is conducted to concisely corroborate the efficacy of the presented framework.

Topics & Concepts

Model predictive controlDynamical simulationControl engineeringTask (project management)Online modelIdentification (biology)Stability (learning theory)System dynamicsSystem identificationComputer scienceUncertainty quantificationControl theory (sociology)Control (management)Machine learningEngineeringArtificial intelligencePhysicsData modelingMathematicsSystems engineeringDatabaseStatisticsBotanyBiologyQuantum mechanicsModel Reduction and Neural NetworksAdvanced Control Systems OptimizationReal-time simulation and control systems