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Model-based reinforcement learning approach for deformable linear object manipulation

机译:可变形线性物体操纵模型的增强学习方法

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摘要

Deformable Linear Object (DLO) manipulation has wide application in industry and in daily life. Conventionally, it is difficult for a robot to manipulate a DLO to achieve the target configuration due to the absence of the universal model that specifies the DLO regardless of the material and environment. Since the state variable of a DLO can be very high dimensional, identifying such a model may require a huge number of samples. Thus, model-based planning of DLO manipulation would be impractical and unreasonable. In this paper, we explore another approach based on reinforcement learning. To this end, our approach is to apply a sample-efficient model-based reinforcement learning method, so-called PILCO [1], to resolve the high dimensional planning problem of DLO manipulation with a reasonable number of samples. To investigate the effectiveness of our approach, we developed an experimental setup with a dual-arm industrial robot and multiple sensors. Then, we conducted experiments to show that our approach is efficient by performing a DLO manipulation task.
机译:可变形的线性对象(DLO)操作在工业和日常生活中具有广泛的应用。传统上,机器人难以操纵DLO,以实现由于普遍模型而导致的目标配置,该通用模型指定了DLO,无论材料和环境如何。由于DLO的状态变量可以是非常高的维度,因此识别这种模型可能需要大量的样本。因此,基于模型的DLO操纵计划是不切实际和不合理的。在本文中,我们探索了一种基于强化学习的另一种方法。为此,我们的方法是应用一种采样高效的基于模型的增强学习方法,所谓的Pilco [1],以利用合理数量的样本来解决DLO操纵的高维规划问题。为了调查我们的方法的有效性,我们开发了一种具有双臂工业机器人和多个传感器的实验设置。然后,我们进行了实验,以表明我们的方法通过执行DLO操作任务是有效的。

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