Deep-OSG: Deep Learning of Operators in Semigroup
Junfeng Chen, Kailiang Wu

TL;DR
This paper introduces a deep learning framework that incorporates the semigroup property to improve the modeling of autonomous dynamical systems, enhancing accuracy, robustness, and long-term stability in predictions.
Contribution
It is the first to embed the semigroup property into neural network learning for dynamical systems, enabling variable time step modeling and improved prediction consistency.
Findings
Reduces data dependency in deep learning models.
Significantly improves long-term prediction accuracy.
Enhances robustness and stability of the learned models.
Abstract
This paper proposes a novel deep learning approach for learning operators in semigroup, with applications to modeling unknown autonomous dynamical systems using time series data collected at varied time lags. It is a sequel to the previous flow map learning (FML) works [T. Qin, K. Wu, and D. Xiu, J. Comput. Phys., 395:620--635, 2019], [K. Wu and D. Xiu, J. Comput. Phys., 408:109307, 2020], and [Z. Chen, V. Churchill, K. Wu, and D. Xiu, J. Comput. Phys., 449:110782, 2022], which focused on learning single evolution operator with a fixed time step. This paper aims to learn a family of evolution operators with variable time steps, which constitute a semigroup for an autonomous system. The semigroup property is very crucial and links the system's evolutionary behaviors across varying time scales, but it was not considered in the previous works. We propose for the first time a framework of…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows · Neural Networks and Reservoir Computing
