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Main Authors: Bing, Yi, Ran, Zheng, Jinyang, Fu, Long, Liu, Xiang, Peng
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.25943
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author Bing, Yi
Ran, Zheng
Jinyang, Fu
Long, Liu
Xiang, Peng
author_facet Bing, Yi
Ran, Zheng
Jinyang, Fu
Long, Liu
Xiang, Peng
contents Efficient and stable solution of partial differential equations (PDEs) is central to scientific and engineering applications, yet existing numerical solvers rely heavily on matrix based discretizations, while learning based methods require costly training and often suffer from limited generalization. In this work, we proposes a PDE energy driven framework that solves PDEs through physically constrained diffusion iterations, without relying on classical matrix based finite element assembly or data driven neural network training. The proposed method evolves arbitrary random initial fields through PDE energy driven implicit iterations combined with Gaussian smoothing, while strictly enforcing boundary conditions at each iteration. The proposed formulation is applied to representative one dimensional Poisson, Heat, and viscous Burgers equations, covering both steady state and transient problems. Numerical results demonstrate stable convergence to the unique physical solution from random initializations, with accurate resolution of sharp gradients and controlled Mean Squared Error (MSE) across a wide range of discretization parameters. Detailed comparisons with analytical solutions indicate that the framework achieves competitive accuracy and stability. Overall, the proposed framework provides a fast, flexible, and physically consistent alternative to traditional numerical solvers, offering a potential pathway for scalable PDE solutions in both research and engineering applications.
format Preprint
id arxiv_https___arxiv_org_abs_2604_25943
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Randomized PDE Energy driven Iterative Framework for Efficient and Stable PDE Solutions
Bing, Yi
Ran, Zheng
Jinyang, Fu
Long, Liu
Xiang, Peng
Machine Learning
Artificial Intelligence
Computational Physics
Efficient and stable solution of partial differential equations (PDEs) is central to scientific and engineering applications, yet existing numerical solvers rely heavily on matrix based discretizations, while learning based methods require costly training and often suffer from limited generalization. In this work, we proposes a PDE energy driven framework that solves PDEs through physically constrained diffusion iterations, without relying on classical matrix based finite element assembly or data driven neural network training. The proposed method evolves arbitrary random initial fields through PDE energy driven implicit iterations combined with Gaussian smoothing, while strictly enforcing boundary conditions at each iteration. The proposed formulation is applied to representative one dimensional Poisson, Heat, and viscous Burgers equations, covering both steady state and transient problems. Numerical results demonstrate stable convergence to the unique physical solution from random initializations, with accurate resolution of sharp gradients and controlled Mean Squared Error (MSE) across a wide range of discretization parameters. Detailed comparisons with analytical solutions indicate that the framework achieves competitive accuracy and stability. Overall, the proposed framework provides a fast, flexible, and physically consistent alternative to traditional numerical solvers, offering a potential pathway for scalable PDE solutions in both research and engineering applications.
title A Randomized PDE Energy driven Iterative Framework for Efficient and Stable PDE Solutions
topic Machine Learning
Artificial Intelligence
Computational Physics
url https://arxiv.org/abs/2604.25943