Nonlinear Model Predictive Control for 3D Formation of Multirotor Micro Aerial Vehicles with Relative Sensing in Local Coordinates
I. Kagan Erunsal, Rodrigo Ventura, Alcherio Martinoli

TL;DR
This paper presents a centralized nonlinear model predictive control method for 3D formation of multirotor MAVs using only relative sensing in local coordinates, enabling robust formation control without global localization.
Contribution
It introduces a novel NMPC framework based on relative sensing and local coordinates for multirotor MAV formation control, avoiding reliance on global positioning.
Findings
Robust formation control achieved under sensor noise and model uncertainty.
Effective handling of sudden changes in formation dynamics.
Real-time control implementation demonstrated in extensive scenarios.
Abstract
The complex tasks such as surveillance, construction, search and rescue can benefit of the maneuverability of multirotor Micro Aerial Vehicles (MAVs) to obtain robust, cooperative system behavior and formation control is a prominent component of the these complex tasks. This work focuses on the problem of three-dimensional formation control of multirotor MAVs by using exclusively relative sensory information. It proposes a centralized Nonlinear Model Predictive Control (NMPC) approach in a leader-follower scheme. A realistic six degrees of freedom mathematical model of a multirotor MAVs is introduced and leveraged in the control laws. The formulation of the problem is performed based on NMPC and relative sensing framework with respect to local coordinate frames of the robots. This type of formulation makes the formation independent of the full knowledge of global or common reference…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Adaptive Control of Nonlinear Systems · Micro and Nano Robotics
