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Main Authors: Xiao, Haoran, Wang, Xue, Lu, Huimin, Zeng, Zhiwen, Guo, Zirui, Ni, Ziqi, Ye, Yicong, Dai, Wei
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.14531
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author Xiao, Haoran
Wang, Xue
Lu, Huimin
Zeng, Zhiwen
Guo, Zirui
Ni, Ziqi
Ye, Yicong
Dai, Wei
author_facet Xiao, Haoran
Wang, Xue
Lu, Huimin
Zeng, Zhiwen
Guo, Zirui
Ni, Ziqi
Ye, Yicong
Dai, Wei
contents This paper addresses the challenges of automating vibratory sieve shaker operations in a materials laboratory, focusing on three critical tasks: 1) dual-arm lid manipulation in 3 cm clearance spaces, 2) bimanual handover in overlapping workspaces, and 3) obstructed powder sample container delivery with orientation constraints. These tasks present significant challenges, including inefficient sampling in narrow passages, the need for smooth trajectories to prevent spillage, and suboptimal paths generated by conventional methods. To overcome these challenges, we propose a hierarchical planning framework combining Prior-Guided Path Planning and Multi-Step Trajectory Optimization. The former uses a finite Gaussian mixture model to improve sampling efficiency in narrow passages, while the latter refines paths by shortening, simplifying, imposing joint constraints, and B-spline smoothing. Experimental results demonstrate the framework's effectiveness: planning time is reduced by up to 80.4%, and waypoints are decreased by 89.4%. Furthermore, the system completes the full vibratory sieve shaker operation workflow in a physical experiment, validating its practical applicability for complex laboratory automation.
format Preprint
id arxiv_https___arxiv_org_abs_2509_14531
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Dual-Arm Hierarchical Planning for Laboratory Automation: Vibratory Sieve Shaker Operations
Xiao, Haoran
Wang, Xue
Lu, Huimin
Zeng, Zhiwen
Guo, Zirui
Ni, Ziqi
Ye, Yicong
Dai, Wei
Robotics
This paper addresses the challenges of automating vibratory sieve shaker operations in a materials laboratory, focusing on three critical tasks: 1) dual-arm lid manipulation in 3 cm clearance spaces, 2) bimanual handover in overlapping workspaces, and 3) obstructed powder sample container delivery with orientation constraints. These tasks present significant challenges, including inefficient sampling in narrow passages, the need for smooth trajectories to prevent spillage, and suboptimal paths generated by conventional methods. To overcome these challenges, we propose a hierarchical planning framework combining Prior-Guided Path Planning and Multi-Step Trajectory Optimization. The former uses a finite Gaussian mixture model to improve sampling efficiency in narrow passages, while the latter refines paths by shortening, simplifying, imposing joint constraints, and B-spline smoothing. Experimental results demonstrate the framework's effectiveness: planning time is reduced by up to 80.4%, and waypoints are decreased by 89.4%. Furthermore, the system completes the full vibratory sieve shaker operation workflow in a physical experiment, validating its practical applicability for complex laboratory automation.
title Dual-Arm Hierarchical Planning for Laboratory Automation: Vibratory Sieve Shaker Operations
topic Robotics
url https://arxiv.org/abs/2509.14531