Saved in:
Bibliographic Details
Main Authors: Khemakhem, Iskandar, Zobel, Manuel, Schüle, Johannes, Sawodny, Oliver, Uchiyama, Naoki, Farrage, Abdallah
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.14944
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916012938493952
author Khemakhem, Iskandar
Zobel, Manuel
Schüle, Johannes
Sawodny, Oliver
Uchiyama, Naoki
Farrage, Abdallah
author_facet Khemakhem, Iskandar
Zobel, Manuel
Schüle, Johannes
Sawodny, Oliver
Uchiyama, Naoki
Farrage, Abdallah
contents With the growth of the construction industry and the global shortage of skilled labor, the automation of crane control has become increasingly important for safe and efficient operations. A central challenge in automatic crane control is the reduction of load oscillations during motion, which is primarily addressed through appropriate slewing trajectories. In this context, classical model-based control methods rely on accurate dynamical models and expert tuning, and often struggle to meet safety and precision requirements, while many learning-based approaches require large data sets and significant computational resources. This paper proposes a behavioral data-driven framework for generating open-loop slewing trajectories for rotary cranes that suppress load sway while reducing operation time and energy consumption. The approach builds on Willems' fundamental lemma and its generalizations, to bypass explicit system modeling and operate directly on measured input-output data. A practical workflow is presented in this paper to reduce the need for expert knowledge. Despite the underactuated nature of the crane dynamics, the method identifies a nonparametric representation of the system behavior and generates smooth, optimal trajectories using limited data and convex optimization. The proposed trajectory generation method is validated on a laboratory crane setup and compared against an established model-based approach, achieving up to 35% reduction in load sway, 43% reduction in tracking error, and 50% reduction in travel time.
format Preprint
id arxiv_https___arxiv_org_abs_2605_14944
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Behavioral Data-Driven Optimal Trajectory Generation for Rotary Cranes
Khemakhem, Iskandar
Zobel, Manuel
Schüle, Johannes
Sawodny, Oliver
Uchiyama, Naoki
Farrage, Abdallah
Robotics
Systems and Control
With the growth of the construction industry and the global shortage of skilled labor, the automation of crane control has become increasingly important for safe and efficient operations. A central challenge in automatic crane control is the reduction of load oscillations during motion, which is primarily addressed through appropriate slewing trajectories. In this context, classical model-based control methods rely on accurate dynamical models and expert tuning, and often struggle to meet safety and precision requirements, while many learning-based approaches require large data sets and significant computational resources. This paper proposes a behavioral data-driven framework for generating open-loop slewing trajectories for rotary cranes that suppress load sway while reducing operation time and energy consumption. The approach builds on Willems' fundamental lemma and its generalizations, to bypass explicit system modeling and operate directly on measured input-output data. A practical workflow is presented in this paper to reduce the need for expert knowledge. Despite the underactuated nature of the crane dynamics, the method identifies a nonparametric representation of the system behavior and generates smooth, optimal trajectories using limited data and convex optimization. The proposed trajectory generation method is validated on a laboratory crane setup and compared against an established model-based approach, achieving up to 35% reduction in load sway, 43% reduction in tracking error, and 50% reduction in travel time.
title Behavioral Data-Driven Optimal Trajectory Generation for Rotary Cranes
topic Robotics
Systems and Control
url https://arxiv.org/abs/2605.14944