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Main Authors: Vazquez-Soqui, Lamberto, Oliva-Palomo, Fatima, Mercado-Ravell, Diego, Castillo, Pedro
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.04801
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author Vazquez-Soqui, Lamberto
Oliva-Palomo, Fatima
Mercado-Ravell, Diego
Castillo, Pedro
author_facet Vazquez-Soqui, Lamberto
Oliva-Palomo, Fatima
Mercado-Ravell, Diego
Castillo, Pedro
contents Multi-Agent Aerial Load Transport Systems (MAATS) offer greater payload capacity and fault tolerance than single-drone solutions. However, they have an underdetermined tension allocation problem that leads to uneven energy distribution, cable slack, or collisions between drones and cables. This paper presents a real-time optimization layer that improves a hierarchical load-position-attitude controller by incorporating a Sequential Quadratic Programming (SQP) algorithm. The SQP formulation minimizes the sum of squared cable tensions while imposing a cable-alignment penalty that discourages small inter-cable angles, thereby preventing tether convergence without altering the reference trajectory. We tested the method under nominal conditions by running numerical simulations of four quadrotors. Computational experiments based on numerical simulations demonstrate that the SQP routine runs in a few milliseconds on standard hardware, indicating feasibility for real-time use. A sensitivity analysis confirms that the gain of the cable-alignment penalty can be tuned online, enabling a controllable trade-off between safety margin and energy consumption with no measurable degradation of tracking performance in simulation. This framework provides a scalable path to safe and energy-balanced cooperative load transport in practical deployments.
format Preprint
id arxiv_https___arxiv_org_abs_2602_04801
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle SQP-Based Cable-Tension Allocation for Multi-Drone Load Transport
Vazquez-Soqui, Lamberto
Oliva-Palomo, Fatima
Mercado-Ravell, Diego
Castillo, Pedro
Systems and Control
Multi-Agent Aerial Load Transport Systems (MAATS) offer greater payload capacity and fault tolerance than single-drone solutions. However, they have an underdetermined tension allocation problem that leads to uneven energy distribution, cable slack, or collisions between drones and cables. This paper presents a real-time optimization layer that improves a hierarchical load-position-attitude controller by incorporating a Sequential Quadratic Programming (SQP) algorithm. The SQP formulation minimizes the sum of squared cable tensions while imposing a cable-alignment penalty that discourages small inter-cable angles, thereby preventing tether convergence without altering the reference trajectory. We tested the method under nominal conditions by running numerical simulations of four quadrotors. Computational experiments based on numerical simulations demonstrate that the SQP routine runs in a few milliseconds on standard hardware, indicating feasibility for real-time use. A sensitivity analysis confirms that the gain of the cable-alignment penalty can be tuned online, enabling a controllable trade-off between safety margin and energy consumption with no measurable degradation of tracking performance in simulation. This framework provides a scalable path to safe and energy-balanced cooperative load transport in practical deployments.
title SQP-Based Cable-Tension Allocation for Multi-Drone Load Transport
topic Systems and Control
url https://arxiv.org/abs/2602.04801