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Extended Set-based Tasks for Multi-task Execution and Prioritization

24 October 2023
Gennaro Notomista
M. Selvaggio
María Santos
Siddharth Mayya
Francesca Pagano
Vincenzo Lippiello
Cristian Secchi
ArXiv (abs)PDFHTML
Main:2 Pages
17 Figures
Appendix:18 Pages
Abstract

The ability of executing multiple tasks simultaneously is an important feature of redundant robotic systems. As a matter of fact, complex behaviors can often be obtained as a result of the execution of several tasks. Moreover, in safety-critical applications, tasks designed to ensure the safety of the robot and its surroundings have to be executed along with other nominal tasks. In such cases, it is also important to prioritize the former over the latter. In this paper, we formalize the definition of extended set-based tasks, i.e., tasks which can be executed by rendering subsets of the task space asymptotically stable or forward invariant using control barrier functions. We propose a formal mathematical representation of such tasks that allows for the execution of more complex and time-varying prioritized stacks of tasks using kinematic and dynamic robot models alike. We present an optimization-based framework which is computationally efficient, accounts for input bounds, and allows for the stable execution of time-varying prioritized stacks of extended set-based tasks. The proposed framework is validated using extensive simulations, quantitative comparisons to the state-of-the-art hierarchical quadratic programming, and experiments with robotic manipulators.

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@article{notomista2025_2310.16189,
  title={ Extended Set-based Tasks for Multi-task Execution and Prioritization },
  author={ Gennaro Notomista and Mario Selvaggio and Francesca Pagano and María Santos and Siddharth Mayya and Vincenzo Lippiello and Cristian Secchi },
  journal={arXiv preprint arXiv:2310.16189},
  year={ 2025 }
}
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