The shape control of deformable linear objects (DLOs) is challenging, since it is difficult to obtain the deformation models. Previous studies often approximate the models in purely offline or online ways. In this paper, we propose a scheme for the shape control of DLOs, where the unknown model is estimated with both offline and online learning. The model is formulated in a local linear format, and approximated by a neural network (NN). First, the NN is trained offline to provide a good initial estimation of the model, which can directly migrate to the online phase. Then, an adaptive controller is proposed to achieve the shape control tasks, in which the NN is further updated online to compensate for any errors in the offline model caused by insufficient training or changes of DLO properties. The simulation and real-world experiments show that the proposed method can precisely and efficiently accomplish the DLO shape control tasks, and adapt well to new and untrained DLOs.
翻译:变形线性物体(DLOs) 的形状控制具有挑战性, 因为很难获得变形模型。 以前的研究往往以纯离线或在线方式接近模型。 在本文中, 我们提议了一个DLO 形状控制方案, 由离线和在线学习来估计未知模型。 模型以本地线性格式编制, 由神经网络(NN) 近似。 首先, NN 接受离线培训, 以便对模型进行良好的初步估计, 从而可以直接迁移到在线阶段 。 然后, 提议一个适应性控制员来完成形状控制任务, 在这种任务中, NN 将进一步在线更新, 以弥补 DLO 特性的训练或变化造成的离线性模型的任何错误。 模拟和现实世界实验显示, 拟议的方法可以准确和有效地完成 DLO 形状控制任务, 并适应新的和未受过训练的 DLOs 。