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A Neural Operator based on Dynamic Mode Decomposition

Published: July 1, 2025 | arXiv ID: 2507.01117v1

By: Nikita Sakovich , Dmitry Aksenov , Ekaterina Pleshakova and more

Potential Business Impact:

**Solves hard math problems much faster.**

Business Areas:
Natural Language Processing Artificial Intelligence, Data and Analytics, Software

The scientific computation methods development in conjunction with artificial intelligence technologies remains a hot research topic. Finding a balance between lightweight and accurate computations is a solid foundation for this direction. The study presents a neural operator based on the dynamic mode decomposition algorithm (DMD), mapping functional spaces, which combines DMD and deep learning (DL) for spatiotemporal processes efficient modeling. Solving PDEs for various initial and boundary conditions requires significant computational resources. The method suggested automatically extracts key modes and system dynamics using them to construct predictions, reducing computational costs compared to traditional numerical methods. The approach has demonstrated its efficiency through comparative analysis of performance with closest analogues DeepONet and FNO in the heat equation, Laplaces equation, and Burgers equation solutions approximation, where it achieves high reconstruction accuracy.

Country of Origin
🇷🇺 Russian Federation

Page Count
30 pages

Category
Computer Science:
Machine Learning (CS)