In the near future, robots are expected to work with humans or operate alone and may replace human workers in various fields such as homes and factories. In a previous study, we proposed bilateral control-based imitation learning that enables robots to utilize force information and operate almost simultaneously with an expert's demonstration. In addition, we recently proposed an autoregressive neural network model (SM2SM) for bilateral control-based imitation learning to obtain long-term inferences. In the SM2SM model, both master and slave states must be input, but the master states are obtained from the previous outputs of the SM2SM model, resulting in destabilized estimation under large environmental variations. Hence, a new autoregressive neural network model (S2SM) is proposed in this study. This model requires only the slave state as input and its outputs are the next slave and master states, thereby improving the task success rates. In addition, a new feedback controller that utilizes the error between the responses and estimates of the slave is proposed, which shows better reproducibility.
翻译:在最近的将来,机器人预计将与人类一起工作,或单独操作,并可能取代诸如家庭和工厂等各个领域的工人。在先前的一项研究中,我们提议进行双边控制仿真学习,使机器人能够利用武力信息,并几乎与专家的演示同时运行。此外,我们最近提议采用自动递减神经网络模型(SM2SM),用于双边控制仿真学习,以获得长期推断。在SM2SM模型中,主体和奴隶国家都必须成为输入方,但主体国家是从SM2SM模型以前的产出中获得的,从而在巨大的环境变异下导致不稳定的估算。因此,本研究中提出了一个新的自动递减神经网络模型(S2SM),这一模型只需要奴隶状态的投入及其产出成为下一个奴隶和主体国家,从而提高任务成功率。此外,还提议了一个新的反馈控制器,利用奴隶反应和估计之间的错误,这显示出更好的再现性。