End-Effector Cartesian Velocity Control for Redundant Loader Cranes Using Reinforcement Learning (Abstract Reprint)

Authors

  • Abdolreza Taheri Motion Technology R&D, HIAB, Hudiksvall, Sweden Faculty of Engineering and Natural Sciences, Tampere University, Finland
  • Amy Rankka Motion Technology R&D, HIAB, Hudiksvall, Sweden Division of Fluid and Mechatronic Systems, Linköping University, Sweden
  • Pelle Gustafsson Motion Technology R&D, HIAB, Hudiksvall, Sweden
  • Joni Pajarinen Department of Electrical Engineering and Automation, Aalto University, Finland
  • Reza Ghabcheloo Faculty of Engineering and Natural Sciences, Tampere University, Finland

DOI:

https://doi.org/10.1609/aaai.v40i47.41412

Abstract

Loader cranes with multiple actuated joints are complex systems to be operated by humans. Development of advanced assistance functions, such as end-effector velocity control in Cartesian space allows for utilizing the machine to its full speed and potential, wherein actuator limits, load balance, and singularities, as well as other complicated effects are handled by the automated function. To this end, this article provides a reinforcement learning-based policy optimization workflow for training and evaluating controllers using large-scale, parallelized invocations of forward kinematics. Monte Carlo evaluations of the closed-loop model are performed to inspect the stability and performance in the whole operational envelope of the loader crane for safe deployment on real machines. Our approach does not require any explicit inverse-kinematics model and is free from complex or hard-coded actuator limits or objectives. Results of simulations and experiments on a real loader crane are provided to showcase the performance of our approach in comparison to Jacobian inverse-based methods.

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Published

2026-03-14

How to Cite

Taheri, A., Rankka, A., Gustafsson, P., Pajarinen, J., & Ghabcheloo, R. (2026). End-Effector Cartesian Velocity Control for Redundant Loader Cranes Using Reinforcement Learning (Abstract Reprint). Proceedings of the AAAI Conference on Artificial Intelligence, 40(47), 39897–39897. https://doi.org/10.1609/aaai.v40i47.41412