Task-aware motion planning in constrained environments using GMM-informed RRT planners

Abstract

This paper introduces a novel integration of Task-Parameterized Gaussian Mixture Models (TP-GMM) with sampling-based motion planners, specifically RRT, to improve planning efficiency and path optimality in constrained robotic manipulation tasks. The proposed GMM-RRT and GMR-RRT planners exploit a TP-GMM trained offline on human demonstrations to generate task-adaptive sampling distributions, effectively guiding the search toward feasible and high-quality solutions. The framework is implemented in the MoveIt motion planning framework and evaluated across five simulation experiments and 30 real-world trials, focusing on Electric Vehicle (EV) battery disassembly tasks. Compared to baseline sampling-based planners, the GMM-informed planners demonstrate superior performance in key planning metrics. In the path length aspect, GMM planners yield significantly shorter trajectories, averaging 0.8 meters versus over 2 meters for baseline planners. Similarly, in path simplification time, the near-optimal nature of the generated paths reduces post-processing efforts. While planning time is higher due to TP-GMM inference and projection stages, over 90% of that time is spent outside the RRT search itself, which completes quickly due to guided sampling. Path duration also remains competitive, with GMM-informed planners closely matching RRT*. These results highlight the effectiveness of task-conditioned sampling in unstructured manipulation scenarios. The proposed method maintains 100% success rate while improving efficiency, suggesting strong potential for integration in sequential and adaptive robotic systems. Future work will focus on extending generalization to broader task parameter spaces and addressing inverse kinematics challenges.

Publication DOI: https://doi.org/10.1016/j.rcim.2025.103095
Divisions: College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies > Applied AI & Robotics
College of Engineering & Physical Sciences
College of Engineering & Physical Sciences > Aston Centre for Artifical Intelligence Research and Application
College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies
Aston University (General)
Funding Information: This work was supported in part by the UK Research and Inno-vation, United Kingdom (UKRI) project ‘‘Research and Development of a Highly Automated and Safe Streamlined Process for Increase Lithium-ion Battery Repurposing and Recycling’’ (REBELION) under G
Additional Information: Copyright © 2025 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY license ( https://creativecommons.org/licenses/by/4.0/ ).
Publication ISSN: 0736-5845
Last Modified: 22 Aug 2025 07:41
Date Deposited: 13 Aug 2025 08:47
Full Text Link:
Related URLs: https://www.sci ... 1498?via%3Dihub (Publisher URL)
http://www.scop ... tnerID=8YFLogxK (Scopus URL)
PURE Output Type: Article
Published Date: 2026-02
Published Online Date: 2025-07-31
Accepted Date: 2025-07-07
Authors: Shaarawy, Abdelaziz
Rastegarpanah, Alireza (ORCID Profile 0000-0003-4264-6857)
Stolkin, Rustam

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