Evaluating Task Optimization and Reinforcement Learning Models in Robotic Task Parameterization

Abstract

The rapid evolution of industrial robot hardware has created a technological gap with software, limiting its adoption. The software solutions proposed in recent years have yet to meet the industrial sector’s requirements, as they focus more on the definition of task structure than the definition and tuning of its execution parameters. A framework for task parameter optimization was developed to address this gap. It breaks down the task using a modular structure, allowing the task optimization piece by piece. The optimization is performed with a dedicated hill-climbing algorithm. This paper revisits the framework by proposing an alternative approach that replaces the algorithmic component with reinforcement learning (RL) models. Five RL models are proposed with increasing complexity and efficiency. A comparative analysis of the traditional algorithm and RL models is presented, highlighting efficiency, flexibility, and usability. The results demonstrate that although RL models improve task optimization efficiency by 95%, they still need more flexibility. However, the nature of these models provides significant opportunities for future advancements.

Publication DOI: https://doi.org/10.1109/ACCESS.2024.3504354
Divisions: College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies
College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies > Applied AI & Robotics
Aston University (General)
Funding Information: This work was supported in part by the REBELION Project under Grant 101104241; and in part by the Lombardy, Italy Regional Project EcoCirc (deliberation XI/4730 of the 17/05/2021).
Additional Information: Copyright © 2024 The Authors. This work is licensed under a Creative Commons Attribution 4.0 License: https://creativecommons.org/licenses/by/4.0/
Uncontrolled Keywords: intuitive robot programming,Reinforcement learning,robotic task optimization,task-oriented programming,General Computer Science,General Materials Science,General Engineering
Publication ISSN: 2169-3536
Last Modified: 03 Sep 2025 07:39
Date Deposited: 02 Sep 2025 11:02
Full Text Link:
Related URLs: https://ieeexpl ... cument/10759640 (Publisher URL)
http://www.scop ... tnerID=8YFLogxK (Scopus URL)
PURE Output Type: Article
Published Date: 2024-11-20
Accepted Date: 2024-11-14
Authors: Delledonne, Michele
Villagrossi, Enrico
Beschi, Manuel
Rastegarpanah, Alireza (ORCID Profile 0000-0003-4264-6857)

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