论文标题

鱼类:水下机器人学习的高性能物理模拟框架

FishGym: A High-Performance Physics-based Simulation Framework for Underwater Robot Learning

论文作者

Liu, Wenji, Bai, Kai, He, Xuming, Song, Shuran, Zheng, Changxi, Liu, Xiaopei

论文摘要

仿生的水下机器人在许多应用中都表现出了它们的优势。然而,训练他们的智能完成了模仿水下生物行为的各种任务在实践中构成了许多挑战,这主要是由于缺乏大量可用的培训数据以及实际物理环境中的高成本。另外,模拟被认为是在不同环境中获取数据集的可行且重要的工具,但它主要针对刚体和软体系统。目前,对于更复杂的流体系统而言,与沉浸式固体相互作用的工作缺乏,这些系统可以有效,准确地模拟机器人训练目的。在本文中,我们提出了一个名为“鱼类”的新平台,该平台可用于训练类似鱼类的水下机器人。该框架由使用带有肤色的铰接体的机器人鱼类建模模块组成,这是一个基于GPU的高性能局部耦合流体结构互动模拟模拟模拟模拟模块,该模块可以处理有限的和无限的大域,以及一个强化学习模块。我们利用现有的培训方法,并适应了水下鱼类的机器人,并获得了多个基准任务的学习控制政策。通过合理的运动轨迹证明了训练结果,并与经验模型进行了比较和分析,以及已知的真实鱼游泳行为,以突出提出的平台的优势。

Bionic underwater robots have demonstrated their superiority in many applications. Yet, training their intelligence for a variety of tasks that mimic the behavior of underwater creatures poses a number of challenges in practice, mainly due to lack of a large amount of available training data as well as the high cost in real physical environment. Alternatively, simulation has been considered as a viable and important tool for acquiring datasets in different environments, but it mostly targeted rigid and soft body systems. There is currently dearth of work for more complex fluid systems interacting with immersed solids that can be efficiently and accurately simulated for robot training purposes. In this paper, we propose a new platform called "FishGym", which can be used to train fish-like underwater robots. The framework consists of a robotic fish modeling module using articulated body with skinning, a GPU-based high-performance localized two-way coupled fluid-structure interaction simulation module that handles both finite and infinitely large domains, as well as a reinforcement learning module. We leveraged existing training methods with adaptations to underwater fish-like robots and obtained learned control policies for multiple benchmark tasks. The training results are demonstrated with reasonable motion trajectories, with comparisons and analyses to empirical models as well as known real fish swimming behaviors to highlight the advantages of the proposed platform.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源