Physics-informed neural networks for gravity field modeling of the Earth and Moon

被引:12
|
作者
Martin, John [1 ]
Schaub, Hanspeter [1 ]
机构
[1] Univ Colorado, Ann & HJ Smead Dept Aerosp Engn Sci, 3775 Discovery Dr, Boulder, CO 80303 USA
来源
基金
美国国家科学基金会;
关键词
Gravity field modeling; Machine learning; Physics-informed neural network; Spherical harmonics; Planetary bodies; Astrodynamics; REPRESENTATIONS;
D O I
10.1007/s10569-022-10069-5
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
High-fidelity representations of the gravity field underlie all applications in astrodynamics. Traditionally these gravity models are constructed analytically through a potential function represented in spherical harmonics, mascons, or polyhedrons. Such representations are often convenient for theory, but they come with unique disadvantages in application. Broadly speaking, analytic gravity models are often not compact, requiring thousands or millions of parameters to adequately model high-order features in the environment. In some cases these analytic models can also be operationally limiting-diverging near the surface of a body or requiring assumptions about its mass distribution or density profile. Moreover, these representations can be expensive to regress, requiring large amounts of carefully distributed data which may not be readily available in new environments. To combat these challenges, this paper aims to shift the discussion of gravity field modeling away from purely analytic formulations and toward machine learning representations. Within the past decade there have been substantial advances in the field of deep learning which help bypass some of the limitations inherent to the existing analytic gravity models. Specifically, this paper investigates the use of physics-informed neural networks (PINNs) to represent the gravitational potential of two planetary bodies-the Earth and Moon. PINNs combine the flexibility of deep learning models with centuries of analytic insight to learn new basis functions that are uniquely suited to represent these complex environments. The results show that the learned basis set generated by the PINN gravity model can offer advantages over its analytic counterparts in model compactness and computational efficiency.
引用
收藏
页数:28
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