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Physics-Informed Neural Networks for...
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Martin, J. R.
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Physics-Informed Neural Networks for Gravity Field Modeling.
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Physics-Informed Neural Networks for Gravity Field Modeling./
作者:
Martin, J. R.
出版者:
Ann Arbor : ProQuest Dissertations & Theses, : 2023,
面頁冊數:
225 p.
附註:
Source: Dissertations Abstracts International, Volume: 85-06, Section: B.
Contained By:
Dissertations Abstracts International85-06B.
標題:
Aerospace engineering. -
電子資源:
https://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=30635518
ISBN:
9798381165555
Physics-Informed Neural Networks for Gravity Field Modeling.
Martin, J. R.
Physics-Informed Neural Networks for Gravity Field Modeling.
- Ann Arbor : ProQuest Dissertations & Theses, 2023 - 225 p.
Source: Dissertations Abstracts International, Volume: 85-06, Section: B.
Thesis (Ph.D.)--University of Colorado at Boulder, 2023.
This item must not be sold to any third party vendors.
Gravity is among the most ubiquitous forces within astrodynamics. The motion of every planet, asteroid, and spacecraft is intrinsically influenced by the gravitational forces of objects both near and far. Despite this, no universal model of this force exists. Rather, dynamicists must choose between many different gravity models that each carry their own unique advantages and drawbacks. For example, some models are fast to compute but lack analytic rigor; some achieve high accuracy but come with computational penalties, and others still are built with intrinsic assumptions or have limited operational validity. To combat these challenges, this thesis proposes the Physics-Informed Neural Network gravity model, or PINN-GM, which shifts attention away from analytic approaches and towards data-driven models. Specifically, the PINN-GM leverages recent advances in the field of Scientific Machine Learning to blend the power of neural networks with dynamical systems theory to produce high-fidelity models of complex dynamical systems without sacrificing analytic rigor. Through multiple iterations of development, the PINN-GM now offers high-accuracy, fast execution times, data efficiency, global validity, and exact differentiability. Taken together, these attributes make the PINN-GM well-suited to assist astrodynamicists in a variety of applications including reinforcement learning, periodic orbit discovery, and orbit determination.
ISBN: 9798381165555Subjects--Topical Terms:
1002622
Aerospace engineering.
Subjects--Index Terms:
Astrodynamics
Physics-Informed Neural Networks for Gravity Field Modeling.
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Gravity is among the most ubiquitous forces within astrodynamics. The motion of every planet, asteroid, and spacecraft is intrinsically influenced by the gravitational forces of objects both near and far. Despite this, no universal model of this force exists. Rather, dynamicists must choose between many different gravity models that each carry their own unique advantages and drawbacks. For example, some models are fast to compute but lack analytic rigor; some achieve high accuracy but come with computational penalties, and others still are built with intrinsic assumptions or have limited operational validity. To combat these challenges, this thesis proposes the Physics-Informed Neural Network gravity model, or PINN-GM, which shifts attention away from analytic approaches and towards data-driven models. Specifically, the PINN-GM leverages recent advances in the field of Scientific Machine Learning to blend the power of neural networks with dynamical systems theory to produce high-fidelity models of complex dynamical systems without sacrificing analytic rigor. Through multiple iterations of development, the PINN-GM now offers high-accuracy, fast execution times, data efficiency, global validity, and exact differentiability. Taken together, these attributes make the PINN-GM well-suited to assist astrodynamicists in a variety of applications including reinforcement learning, periodic orbit discovery, and orbit determination.
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