Progressive reduced order modeling: empowering data-driven modeling with selective knowledge transfer
Teeratorn Kadeethum, Daniel O'Malley, Youngsoo Choi, Hari S., Viswanathan, Hongkyu Yoon

TL;DR
This paper introduces a progressive reduced order modeling framework that selectively transfers knowledge from previous models to reduce data requirements and improve accuracy in engineering applications.
Contribution
The proposed framework enables selective knowledge transfer using gates, significantly reducing data needs while maintaining high accuracy, demonstrated across multiple engineering cases.
Findings
Outperforms models trained on nine times more data
Reduces training data requirements by leveraging prior knowledge
Improves accuracy with minimal data in various applications
Abstract
Data-driven modeling can suffer from a constant demand for data, leading to reduced accuracy and impractical for engineering applications due to the high cost and scarcity of information. To address this challenge, we propose a progressive reduced order modeling framework that minimizes data cravings and enhances data-driven modeling's practicality. Our approach selectively transfers knowledge from previously trained models through gates, similar to how humans selectively use valuable knowledge while ignoring unuseful information. By filtering relevant information from previous models, we can create a surrogate model with minimal turnaround time and a smaller training set that can still achieve high accuracy. We have tested our framework in several cases, including transport in porous media, gravity-driven flow, and finite deformation in hyperelastic materials. Our results illustrate…
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Taxonomy
TopicsModel Reduction and Neural Networks · Numerical methods for differential equations
