Structured learning of rigid-body dynamics: A survey and unified view from a robotics perspective

Q1 Mathematics
A. René Geist, Sebastian Trimpe
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引用次数: 7

Abstract

Accurate models of mechanical system dynamics are often critical for model-based control and reinforcement learning. Fully data-driven dynamics models promise to ease the process of modeling and analysis, but require considerable amounts of data for training and often do not generalize well to unseen parts of the state space. Combining data-driven modeling with prior analytical knowledge is an attractive alternative as the inclusion of structural knowledge into a regression model improves the model's data efficiency and physical integrity. In this article, we survey supervised regression models that combine rigid-body mechanics with data-driven modeling techniques. We analyze the different latent functions (such as kinetic energy or dissipative forces) and operators (such as differential operators and projection matrices) underlying common descriptions of rigid-body mechanics. Based on this analysis, we provide a unified view on the combination of data-driven regression models, such as neural networks and Gaussian processes, with analytical model priors. Furthermore, we review and discuss key techniques for designing structured models such as automatic differentiation.

Abstract Image

刚体动力学的结构化学习:从机器人角度的调查和统一观点
准确的机械系统动力学模型对于基于模型的控制和强化学习至关重要。完全数据驱动的动态模型有望简化建模和分析的过程,但需要大量的数据进行训练,并且通常不能很好地泛化到状态空间中不可见的部分。将数据驱动的建模与先前的分析知识相结合是一个有吸引力的选择,因为将结构知识包含到回归模型中可以提高模型的数据效率和物理完整性。在本文中,我们调查了将刚体力学与数据驱动建模技术相结合的监督回归模型。我们分析了不同的潜在函数(如动能或耗散力)和算子(如微分算子和投影矩阵),这些算子是刚体力学常见描述的基础。基于这一分析,我们对数据驱动回归模型(如神经网络和高斯过程)与分析模型先验的结合提供了统一的观点。此外,我们回顾和讨论了设计结构化模型的关键技术,如自动微分。
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
GAMM Mitteilungen
GAMM Mitteilungen Mathematics-Applied Mathematics
CiteScore
8.80
自引率
0.00%
发文量
23
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