Robotic peg-in-hole assembly is an essential task in robotic automation research. Reinforcement learning (RL) combined with deep neural networks (DNNs) lead to extraordinary achievements in this area. However, current RL-based approaches could hardly perform well under the unique environmental and mission requirements of fusion applications. Therefore, we have proposed a new designed RL-based method. Furthermore, unlike other approaches, we focus on innovations in the structure of DNNs instead of the RL model. Data from the RGB camera and force/torque (F/T) sensor as the input are fed into a multi-input branch network, and the best action in the current state is output by the network. All training and experiments are carried out in a realistic environment, and from the experiment result, this multi-sensor fusion approach has been shown to work well in rigid peg-in-hole assembly tasks with 0.1mm precision in uncertain and unstable environments.
翻译:在机器人自动化研究中,机器人连接孔组装是一项基本任务。强化学习(RL)与深神经网络(DNN)相结合,在这一领域取得了非凡的成就。然而,在聚变应用的独特环境和任务要求下,目前基于RL的方法很难很好地发挥作用。因此,我们提出了一个新的设计RL的方法。此外,与其他方法不同,我们侧重于DNN结构的创新,而不是RL模型。RGB相机和强力/感应器(F/T)传感器的数据,因为输入的内容被输入多投入分支网络,而目前的最佳行动是网络的产出。所有培训和实验都是在现实环境中进行的,从实验结果来看,这种多传感器聚变方法在不确定和不稳定环境中的精确度为0.1毫米的僵硬嵌入孔组装任务中运作良好。