A parameterized Wasserstein Hamiltonian flow approach for solving the Schr\"odinger equation
A parameterized Wasserstein Hamiltonian flow approach for solving the Schr\"odinger equation
In this paper, we propose a new method to compute the solution of time-dependent Schr\"odinger equation (TDSE). Using push-forward maps and Wasserstein Hamiltonian flow, we reformulate the TDSE as a Hamiltonian system in terms of push-forward maps. The new formulation can be viewed as a generative model in the Wasserstein space, which is a manifold of probability density functions. Then we parameterize the push-forward maps by reduce-order models such as neural networks. This induces a new metric in the parameter space by pulling back the Wasserstein metric on density manifold, which further results in a system of ordinary differential equations (ODEs) for the parameters of the reduce-order model. Leveraging the computational techniques from deep learning, such as Neural ODE, we design an algorithm to solve the TDSE in the parameterized push-forward map space, which provides an alternative approach with the potential to scale up to high-dimensional problems. Several numerical examples are presented to demonstrate the performance of this algorithm.
Hao Wu、Shu Liu、Xiaojing Ye、Haomin Zhou
物理学
Hao Wu,Shu Liu,Xiaojing Ye,Haomin Zhou.A parameterized Wasserstein Hamiltonian flow approach for solving the Schr\"odinger equation[EB/OL].(2025-05-16)[2025-07-16].https://arxiv.org/abs/2505.11762.点此复制
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