Fast RLS Identification Leveraging the Linearized System Sparsity: Predictive Cost Adaptive Control for Quadrotors
By: Tam W. Nguyen
Potential Business Impact:
Drones fly better by learning how they move.
This paper presents a centralized predictive cost adaptive control (PCAC) strategy for the position and attitude control of quadrotors. PCAC is an optimal, prediction-based control method that uses recursive least squares (RLS) to identify model parameters online, enabling adaptability in dynamic environments. Addressing challenges with black-box approaches in systems with complex couplings and fast dynamics, this study leverages the unique sparsity of quadrotor models linearized around hover points. By identifying only essential parameters related to nonlinear couplings and dynamics, this approach reduces the number of parameters to estimate, accelerates identification, and enhances stability during transients. Furthermore, the proposed control scheme removes the need for an attitude setpoint, typically required in conventional cascaded control designs.
Similar Papers
Improving Drone Racing Performance Through Iterative Learning MPC
Robotics
Makes drones race faster and avoid crashing.
Model Identification Adaptive Control with $ρ$-POMDP Planning
Robotics
Teaches robots to learn and control things better.
Online Identification using Adaptive Laws and Neural Networks for Multi-Quadrotor Centralized Transportation System
Systems and Control
Drones carry heavy loads more steadily.