ArXiv TLDR

Sensorless State Estimation and Control for Agile Cable-Suspended Payload Transport by Quadrotors

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2605.03666

Ana Maria Nascimento, Augusto Sales, Antonio Marcus Lima, Tiago Nascimento

cs.RO

TLDR

This paper introduces a sensorless control and estimation method for quadrotors to agilely transport cable-suspended payloads, improving tracking.

Key contributions

  • Proposes a novel sensorless state estimation for cable-suspended loads using geometric constraints.
  • Utilizes the Udwadia-Kalaba method to integrate cable constraints and tension into NMPC for dynamic modeling.
  • Explicitly incorporates load dynamics into the optimization, significantly reducing trajectory-tracking errors.
  • Real-robot experiments validate improved performance and reduced errors compared to incomplete models.

Why it matters

This work overcomes practical limitations in aerial manipulation by eliminating the need for direct load measurements. It enables more agile and robust transport of cable-suspended payloads, crucial for complex drone applications.

Original Abstract

This work proposes a novel control and estimation approach for aerial manipulation of a cable-suspended load using Unmanned Aerial Vehicles (UAVs). Common approaches in the state of the art have practical limitations, relying on direct load measurements and Lagrangian methods for dynamic modeling. The lack of a straightforward dynamic model of the system led us to propose adopting the Udwadia-Kalaba method to explicitly incorporate the cable's geometric constraints. This formulation allowed for the consistent derivation of the tension force and its direct integration into the NMPC prediction model. Additionally, we propose a sensorless load state estimation based on the same geometric constraints. Results from real-robot experiments demonstrated that the explicit inclusion of load dynamics in the optimization problem significantly reduces trajectory-tracking errors and yields better overall performance compared to strategies based on incomplete models.

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