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Designing Poisson Integrators Using Machine Learning Techniques


Khái niệm cốt lõi
This paper presents a general method to construct Poisson integrators, i.e., integrators that preserve the underlying Poisson geometry, by formulating the design of Poisson integrators as solutions to a Hamilton-Jacobi PDE and approximating it using machine learning techniques.
Tóm tắt

The paper introduces a general geometric setting for describing Poisson geometric integrators when the problem evolves on an integrable Poisson manifold. It provides a method for approximating the Hamilton-Jacobi equation using machine learning-inspired techniques. The key observation is that Poisson diffeomorphisms can be described through Lagrangian submanifolds in the symplectic groupoid integrating the Poisson manifold. The Hamilton-Jacobi equation characterizes these Lagrangian submanifolds, and the authors propose to solve it using optimization techniques and neural networks. The approach is illustrated using the rigid body as an example, showing the preservation of the Hamiltonian and Casimir functions.

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Thống kê
H = 1/2 (x^2/1.5 + y^2/2 + z^2/2.5)
Trích dẫn
"The main novelty of this work is to understand the Hamilton-Jacobi PDE as an optimization problem, whose solution can be easily approximated using machine learning related techniques." "This research direction aligns with the current trend in the PDE and machine learning communities, as initiated by Physics-Informed Neural Networks, advocating for designs that combine both physical modeling (the Hamilton-Jacobi PDE) and data."

Thông tin chi tiết chính được chắt lọc từ

by Migu... lúc arxiv.org 04-01-2024

https://arxiv.org/pdf/2403.20139.pdf
Designing Poisson Integrators Through Machine Learning

Yêu cầu sâu hơn

How can the proposed framework be extended to handle general Poisson structures beyond the integrable case?

To extend the proposed framework to handle general Poisson structures beyond the integrable case, one can explore methods to approximate local symplectic groupoids when a global symplectic groupoid is not readily available. This involves utilizing constructions that can produce local symplectic groupoids, even if a global one is not feasible. By focusing on local symplectic groupoids, the framework can be adapted to work with any Poisson manifold, not just integrable ones. These local symplectic groupoids can provide a suitable setting for designing Poisson integrators that respect the underlying Poisson geometry. This extension allows for a more comprehensive application of the framework to a wider range of Poisson structures, enhancing its versatility and applicability in various scenarios.

How can the combination of the Hamilton-Jacobi equation and available data be leveraged to further improve the design of Poisson integrators?

The combination of the Hamilton-Jacobi equation and available data presents an opportunity to enhance the design of Poisson integrators by incorporating empirical information into the integrator construction process. By blending the Hamilton-Jacobi equation, which ensures the preservation of the underlying Poisson geometry, with available data, one can create integrators that not only satisfy the geometric constraints but also align closely with observed trajectories or measurements. This integration can be achieved by formulating an objective function that combines the Hamilton-Jacobi equation's constraints with a data-driven loss term. The objective function would aim to minimize discrepancies between the simulated trajectories generated by the integrator and the actual data points. By optimizing this combined objective function, the integrator can be fine-tuned to match the observed behavior more accurately, leading to improved predictive capabilities and a better representation of the system dynamics.

What are the potential applications of the designed Poisson integrators in various scientific and engineering domains?

The designed Poisson integrators hold significant potential for applications across diverse scientific and engineering domains due to their ability to accurately simulate and analyze complex Hamiltonian systems while preserving the underlying Poisson geometry. Some potential applications include: Celestial Mechanics: Poisson integrators can be utilized to model the dynamics of celestial bodies, planetary systems, and satellites with high precision, aiding in trajectory predictions and mission planning. Quantum Mechanics: In quantum systems, Poisson integrators can be valuable for simulating the evolution of quantum states, studying quantum entanglement, and exploring quantum information processing. Robotics and Control Systems: Poisson integrators can play a crucial role in designing control algorithms for robotic systems, ensuring stability and accuracy in robot motion planning and control. Material Science: By accurately modeling the dynamics of materials at the atomic and molecular levels, Poisson integrators can contribute to the development of new materials, understanding phase transitions, and predicting material properties. Fluid Dynamics: Poisson integrators can be applied in fluid dynamics simulations to study fluid flow behavior, turbulence, and optimize designs in areas such as aerodynamics and hydrodynamics. Biophysics: In biophysics, Poisson integrators can aid in modeling biological systems, protein folding dynamics, and molecular interactions, providing insights into complex biological processes. Overall, the designed Poisson integrators have the potential to advance research and innovation in various fields by offering accurate and reliable tools for simulating and analyzing complex dynamical systems.
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