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Modeling transient fluid simulations with proper orthogonal decomposition and machine learning

Chin Chun Ooi, Quang Tuyen Le, My Ha Dao, Van Bo Nguyen, Hoang Huy Nguyen, Te Ba

2020International Journal for Numerical Methods in Fluids31 citationsDOI

Abstract

Summary In this work, we present the results obtained from integrating several machine learning (ML) models with projection‐based reduced order model for modeling the canonical case of flow past a stationary cylinder. We demonstrate how ML models can be used to model the time‐varying characteristics of the proper orthogonal decomposition (POD) coefficients, and that the locally interpolating models such as regression trees and k‐nearest neighbors seem to be better for such models than other models like support vector regression or long‐short term memory networks. In addition, our numerical experiments also show that these POD coefficients are most effectively modeled by using their own previous time values, as opposed to the inclusion of high energy POD modes. Last but not least, we demonstrate that these models, although trained on inlet velocities of 0.8, 1.0, and 1.2 m/s, can still predict the POD coefficients of flow fields for inlet velocities of 0.9 and 1.25 m/s, with root mean squared error of under 10%.

Topics & Concepts

Point of deliveryMathematicsProjection (relational algebra)Mean squared errorFlow (mathematics)InletTransient (computer programming)Proper orthogonal decompositionApplied mathematicsRoot mean squareAlgorithmCylinderComputer scienceStatisticsGeometryEngineeringMechanical engineeringAgronomyBiologyElectrical engineeringOperating systemModel Reduction and Neural NetworksProbabilistic and Robust Engineering DesignNuclear Engineering Thermal-Hydraulics
Modeling transient fluid simulations with proper orthogonal decomposition and machine learning | Litcius