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通过机器人辅助学习引导虚拟双足步行器

Bootstrapping Virtual Bipedal Walkers with Robotics Scaffolded Learning.

作者信息

Zhu Jiahui, Rong Chunyan, Iida Fumiya, Rosendo Andre

机构信息

Living Machines Laboratory, School of Information Science and Technology, ShanghaiTech University, Shanghai, China.

Bio-Inspired Robotics Laboratory, Department of Engineering, University of Cambridge, Cambridge, United Kingdom.

出版信息

Front Robot AI. 2021 Sep 8;8:702599. doi: 10.3389/frobt.2021.702599. eCollection 2021.

Abstract

We reach walking optimality from a very early age by using natural supports, which can be the hands of our parents, chairs, and training wheels, and bootstrap a new knowledge from the recently acquired one. The idea behind bootstrapping is to use the previously acquired knowledge from simpler tasks to accelerate the learning of more complicated ones. In this paper, we propose a scaffolded learning method from an evolutionary perspective, where a biped creature achieves stable and independent bipedal walking while exploiting the natural scaffold of its changing morphology to create a third limb. The novelty of this work is speeding up the learning process with an artificially recreated scaffolded learning. We compare three conditions of scaffolded learning (free, time-constrained, and performance-based scaffolded learning) to reach bipedalism, and we prove that a performance-based scaffold, which is designed by the walking velocity obtained, is the most conducive to bootstrap the learning of bipedal walking. The scope of this work is not to study bipedal locomotion but to investigate the contribution from scaffolded learning to a faster learning process. Beyond a pedagogical experiment, this work presents a powerful tool to accelerate the learning of complex tasks in the Robotics field.

摘要

我们在很小的时候就通过利用自然支撑(比如父母的手、椅子和辅助轮)达到行走的最优状态,并从最近习得的知识中衍生出新的知识。衍生背后的理念是利用从较简单任务中先前习得的知识来加速学习更复杂的任务。在本文中,我们从进化的角度提出一种支架式学习方法,即一个两足生物在利用其不断变化的形态的自然支架创造出第三条肢体的同时,实现稳定且独立的双足行走。这项工作的新颖之处在于通过人工重建的支架式学习来加速学习过程。我们比较了三种支架式学习条件(自由、时间受限和基于性能的支架式学习)以实现双足行走,并且我们证明,基于通过所获得的行走速度设计的基于性能的支架,最有利于促进双足行走的学习。这项工作的范围不是研究双足运动,而是探究支架式学习对更快学习过程的贡献。除了一个教学实验外,这项工作还提供了一个强大的工具来加速机器人领域复杂任务的学习。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f711/8456033/077f0e495d8e/frobt-08-702599-g001.jpg

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