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Main Authors: Long, Jiahuan, Zhang, Wenzhe, Wang, Ning, Jiang, Tingsong, Yao, Wen
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.16083
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author Long, Jiahuan
Zhang, Wenzhe
Wang, Ning
Jiang, Tingsong
Yao, Wen
author_facet Long, Jiahuan
Zhang, Wenzhe
Wang, Ning
Jiang, Tingsong
Yao, Wen
contents Physical field reconstruction (PFR) aims to predict the state distribution of physical quantities (e.g., velocity, pressure, and temperature) based on limited sensor measurements. It plays a critical role in domains such as fluid dynamics and thermodynamics. However, existing deep learning methods often fail to capture long-range temporal dependencies, resulting in suboptimal performance on time-evolving physical systems. To address this, we propose FR-Mamba, a novel spatiotemporal flow field reconstruction framework based on state space modeling. Specifically, we design a hybrid neural network architecture that combines Fourier Neural Operator (FNO) and State Space Model (SSM) to capture both global spatial features and long-range temporal dependencies. We adopt Mamba, a recently proposed efficient SSM architecture, to model long-range temporal dependencies with linear time complexity. In parallel, the FNO is employed to capture non-local spatial features by leveraging frequency-domain transformations. The spatiotemporal representations extracted by these two components are then fused to reconstruct the full-field distribution of the physical system. Extensive experiments demonstrate that our approach significantly outperforms existing PFR methods in flow field reconstruction tasks, achieving high-accuracy performance on long sequences.
format Preprint
id arxiv_https___arxiv_org_abs_2505_16083
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FR-Mamba: Time-Series Physical Field Reconstruction Based on State Space Model
Long, Jiahuan
Zhang, Wenzhe
Wang, Ning
Jiang, Tingsong
Yao, Wen
Machine Learning
Physical field reconstruction (PFR) aims to predict the state distribution of physical quantities (e.g., velocity, pressure, and temperature) based on limited sensor measurements. It plays a critical role in domains such as fluid dynamics and thermodynamics. However, existing deep learning methods often fail to capture long-range temporal dependencies, resulting in suboptimal performance on time-evolving physical systems. To address this, we propose FR-Mamba, a novel spatiotemporal flow field reconstruction framework based on state space modeling. Specifically, we design a hybrid neural network architecture that combines Fourier Neural Operator (FNO) and State Space Model (SSM) to capture both global spatial features and long-range temporal dependencies. We adopt Mamba, a recently proposed efficient SSM architecture, to model long-range temporal dependencies with linear time complexity. In parallel, the FNO is employed to capture non-local spatial features by leveraging frequency-domain transformations. The spatiotemporal representations extracted by these two components are then fused to reconstruct the full-field distribution of the physical system. Extensive experiments demonstrate that our approach significantly outperforms existing PFR methods in flow field reconstruction tasks, achieving high-accuracy performance on long sequences.
title FR-Mamba: Time-Series Physical Field Reconstruction Based on State Space Model
topic Machine Learning
url https://arxiv.org/abs/2505.16083