多体仿真中(周期)极小坐标的深度学习

A. Angeli, F. Naets, W. Desmet
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引用次数: 3

摘要

机械系统通常通过具有冗余坐标的多体模型来描述,这些模型与强加的约束有关,其中动力学用微分代数方程表示。另外,对于刚性模型,最好采用不需要附加约束的最小坐标,从而得到常微分方程。然而,为了将一般多体模型约简为最小坐标并在约简空间中进行仿真,需要最小坐标与全坐标之间的映射。在这项工作中,建议使用神经网络来近似这种映射。为了避免过拟合和保证解流形的连续描述,在神经网络训练中加入了多体动力学信息。处理并验证了需要周期最小坐标的特殊情况。一般来说,该方法可用于映射未知的情况,例如具有闭环的空间机构。
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Deep Learning of (Periodic) Minimal Coordinates for Multibody Simulations
Mechanical systems are typically described through multi-body models with redundant coordinates, related by imposed constraints, where the dynamics is expressed with Differential Algebraic Equations. Alternatively, for rigid models, it may be preferable to employ minimal coordinates that do not require additional constraints, thus leading to Ordinary Differential Equations. However, to reduce a general multibody model to minimal coordinates and perform the simulation in the reduced space, the mapping between the minimal coordinates and the full coordinates is required. In this work, it is proposed to approximate such mapping using a neural network. In order to avoid overfitting and guarantee a continuous description of the solution manifold, the multibody dynamics information are included in the neural network training. The particular case where periodic minimal coordinates are required is treated and validated. In general, the methodology can be used when the mapping is unknown such as for spatial mechanisms with closed loops.
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