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FOP Networks for Learning Humanoid Body Schema and Dynamics

机译:FOP网络,用于学习仿人人体图式和动力学

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Robot inverse dynamics modeling is performed mainly via standard system identification and/or machine learning techniques. In this paper we part from the theoretical framework of First-Order Principles Networks (FOPnet), combining data-aided learning with basic knowledge to learn the model of a targeted robot. The framework, previously used for learning the dynamics of a fixed-base serial manipulator, is now extended to the learning of the kinematics and dynamics of tree-structured robots with floating base. Our approach leverages the principle of compositionality to separate the main problem into two partially independent modules. The first defines the robot's body schema by characterizing its morphology and topology. The second is dependent upon the latter and defines the inertial properties of the multi-body system. To demonstrate the capabilities of the approach, a simulated humanoid robot with 30 degrees of freedom is used. We discuss the implementation of our method and evaluate its estimation and generalization capabilities in comparison with other common machine learning approaches. Finally, we present experimental results on a 7- DoF manipulator.
机译:机器人逆动力学建模主要通过标准系统识别和/或机器学习技术执行。在本文中,我们从一阶原理网络(FOPnet)的理论框架中分离出来,将数据辅助学习与基础知识相结合,以学习目标机器人的模型。该框架以前用于学习固定基础串行操纵器的动力学,现在已扩展到对具有浮动基础的树状机器人的运动学和动力学的学习。我们的方法利用组合原则将主要问题分为两个部分独立的模块。第一个通过表征其形态和拓扑来定义机器人的身体模式。第二个依赖于后者,并定义了多体系统的惯性。为了演示该方法的功能,使用了具有30个自由度的模拟人形机器人。我们讨论了我们方法的实现,并与其他常见的机器学习方法进行了比较,评估了其估计和泛化能力。最后,我们在7自由度操纵器上展示了实验结果。

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