Learning Graph Dynamics With Interaction Effects Propagation for Deformable Linear Objects Shape Control

IF 6.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS IEEE Transactions on Automation Science and Engineering Pub Date : 2025-01-20 DOI:10.1109/TASE.2025.3530957
Feida Gu;Hongrui Sang;Yanmin Zhou;Jiajun Ma;Rong Jiang;Zhipeng Wang;Bin He
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Abstract

Robotic manipulation of deformable linear objects (DLOs) has broad application prospects, e.g., manufacturing and medical surgery. To achieve such tasks, a critical challenge is the precise control of the DLOs’ shapes, which requires an accurate dynamics model for deformation prediction. However, due to the infinite dimensionality of the DLOs and the complexity of their deformation mechanism, dynamics models are hard to theoretically calculate. In this paper, for representing the DLO, we use multiple particles being uniformly distributed along the DLO. For learning the dynamics model, we adopt Graph Neural Network (GNN) to learn local interaction effects between neighboring particles, and use the attention mechanism to aggregate the effects of these interactions for the purpose of effect propagation along the DLO (called GA-Net). For manipulation, the Model Predictive Control (MPC) coupled with the learned dynamics model is used to calculate the optimal robot movements, which can also generalize to unseen DLOs. Simulation and real-world experiments demonstrate that GA-Net shows better accuracy than existing methods, and the proposed control framework is effective for different DLOs. Specifically, for model prediction (150 steps), the prediction performance of GA-Net is 14.14% better than the strong baseline (IN-BiLSTM). Videos are available at https://parkergu.github.io/work_dlo/. Note to Practitioners—This paper was motivated by the problem of shape control of DLOs (e.g., ropes, cables) but it also applies to other deformable objects. Robotic manipulation of DLOs has broad application prospects across various industries, including medical surgeries and manufacturing. Existing approaches to manipulate DLOs, such as reinforcement learning, suffer from sample inefficiency and challenges in generalization. To alleviate these issues, we propose a model-based framework. We adopt GNN and attention mechanism to learn DLOs’ dynamics. Then we use MPC coupled with the learned dynamics model for manipulation of DLOs. The framework is sample-efficient for manipulation, and can generalize to unseen DLOs. Previous works on GNN-based dynamics model do not consider instantaneous propagation of interaction effects, which leads to a false prediction. To alleviate this issue, we adopt GNN to learn interaction effects between neighboring particles, and use the attention mechanism to propagate local interaction effects along the DLO. Simulation and real-world experiments demonstrate that our dynamics model shows better accuracy than existing methods, and also demonstrate the effectiveness of the proposed control framework.
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基于交互效应传播的可变形线性物体形状控制学习图动力学
机器人对可变形线性物体的操作在制造业、医疗外科等领域有着广阔的应用前景。为了完成这些任务,一个关键的挑战是精确控制DLOs的形状,这需要一个精确的变形预测动力学模型。然而,由于DLOs的无限大维度和其变形机理的复杂性,动力学模型难以理论计算。在本文中,我们使用沿DLO均匀分布的多个粒子来表示DLO。对于动力学模型的学习,我们采用图神经网络(Graph Neural Network, GNN)来学习邻近粒子之间的局部相互作用效应,并利用注意机制将这些相互作用的效应聚集起来,以达到沿DLO(称为GA-Net)传播的目的。在操作方面,将模型预测控制(MPC)与学习动力学模型相结合,用于计算机器人的最优运动,也可以推广到不可见的DLOs。仿真和实际实验表明,GA-Net比现有方法具有更好的精度,并且所提出的控制框架对不同的DLOs是有效的。具体来说,对于模型预测(150步),GA-Net的预测性能比强基线(IN-BiLSTM)好14.14%。视频可在https://parkergu.github.io/work_dlo/上观看。从业人员注意事项——本文的动机是DLOs(如绳索、电缆)的形状控制问题,但它也适用于其他可变形物体。机器人操作DLOs在医疗外科、制造业等各个行业有着广阔的应用前景。现有的处理DLOs的方法,如强化学习,存在样本效率低下和泛化方面的挑战。为了缓解这些问题,我们提出了一个基于模型的框架。我们采用GNN和注意机制来学习DLOs的动态。然后,我们将MPC与学习动力学模型相结合,对DLOs进行控制。该框架对于操作来说是样本高效的,并且可以推广到看不见的dlo。以往基于gnn的动力学模型没有考虑相互作用效应的瞬时传播,导致预测错误。为了解决这一问题,我们采用GNN学习相邻粒子之间的相互作用效应,并利用注意机制沿DLO传播局部相互作用效应。仿真和实际实验表明,我们的动力学模型比现有方法具有更好的精度,也证明了所提出的控制框架的有效性。
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来源期刊
IEEE Transactions on Automation Science and Engineering
IEEE Transactions on Automation Science and Engineering 工程技术-自动化与控制系统
CiteScore
12.50
自引率
14.30%
发文量
404
审稿时长
3.0 months
期刊介绍: The IEEE Transactions on Automation Science and Engineering (T-ASE) publishes fundamental papers on Automation, emphasizing scientific results that advance efficiency, quality, productivity, and reliability. T-ASE encourages interdisciplinary approaches from computer science, control systems, electrical engineering, mathematics, mechanical engineering, operations research, and other fields. T-ASE welcomes results relevant to industries such as agriculture, biotechnology, healthcare, home automation, maintenance, manufacturing, pharmaceuticals, retail, security, service, supply chains, and transportation. T-ASE addresses a research community willing to integrate knowledge across disciplines and industries. For this purpose, each paper includes a Note to Practitioners that summarizes how its results can be applied or how they might be extended to apply in practice.
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