Pretrained Dynamics Learning of Numerous Heterogeneous Robots and Gen2Real Transfer

IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Dengpeng Xing;Yiming Yang;Jiale Li
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引用次数: 0

Abstract

Acquiring dynamics is vital for robotic learning and serves as the foundation for planning and control. This article addresses two essential inquiries: How can one develop a model that encompasses a vast array of diverse robotic dynamics? Is it possible to establish a model that alleviates the burdens of data collection and domain expertise necessary for constructing specific robot models? We explore the dynamics present in a dataset containing numerous serial articulated robots and introduce a novel concept, “Gen2Real,” to transfer simulated, generalized models to physical, and specialized robots. By randomizing dynamics parameters, topological configurations, and model dimensions, we generate an extensive dataset that corresponds to varying properties, connections, and quantities of robotic links. A structure adapted from the generative pretrained transformer is employed to approximate the dynamics of a multitude of heterogeneous robots. Within Gen2Real, we transfer the pretrained model to a target robot using distillation to enable real-time computation. The results corroborate the superiority of the proposed method in terms of accurately learning an immense scope of robotic dynamics, managing commonly encountered disturbances, and exhibiting versatility in transferring to distinct robots.
众多异构机器人的预训练动态学习和 Gen2Real 传输
获取动力学对机器人学习至关重要,是机器人规划和控制的基础。本文解决了两个基本问题:如何开发一个包含大量不同机器人动力学的模型?是否有可能建立一个模型来减轻构建特定机器人模型所需的数据收集和领域专业知识的负担?我们探索了包含大量串行关节机器人的数据集中存在的动力学,并引入了一个新概念,“Gen2Real”,将模拟的、广义的模型转移到物理的和专门的机器人上。通过随机化动力学参数、拓扑配置和模型维度,我们生成了一个广泛的数据集,该数据集对应于机器人链路的不同属性、连接和数量。采用生成式预训练变压器的结构来近似多种异构机器人的动力学。在Gen2Real中,我们使用蒸馏技术将预训练模型转移到目标机器人上,以实现实时计算。结果证实了所提出的方法在准确学习机器人动力学的巨大范围,管理常见的干扰以及展示转移到不同机器人的多功能性方面的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
10.00%
发文量
170
期刊介绍: The IEEE Transactions on Cognitive and Developmental Systems (TCDS) focuses on advances in the study of development and cognition in natural (humans, animals) and artificial (robots, agents) systems. It welcomes contributions from multiple related disciplines including cognitive systems, cognitive robotics, developmental and epigenetic robotics, autonomous and evolutionary robotics, social structures, multi-agent and artificial life systems, computational neuroscience, and developmental psychology. Articles on theoretical, computational, application-oriented, and experimental studies as well as reviews in these areas are considered.
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