Machine-Learning Enhanced Predictors for Accelerated Convergence of Partitioned Fluid-Structure Interaction Simulations
Azzeddine Tiba (M2N), Thibault Dairay (M.F.P. Michelin), Florian de, Vuyst (BMBI), Iraj Mortazavi (M2N), Juan-Pedro Berro Ramirez

TL;DR
This paper introduces a physics-aware machine learning predictor that accelerates partitioned fluid-structure interaction simulations by improving convergence and reducing computational time through reduced-order models with adaptive strategies.
Contribution
It presents a novel non-intrusive, data-driven predictor using reduced-order models with adaptive updates, enhancing stability and speed in FSI simulations involving high added-mass effects.
Findings
Demonstrates improved convergence in FSI simulations
Achieves significant computational speedup
Validates effectiveness across three complex examples
Abstract
Stable partitioned techniques for simulating unsteady fluid-structure interaction (FSI) are known to be computationally expensive when high added-mass is involved. Multiple coupling strategies have been developed to accelerate these simulations, but often use predictors in the form of simple finite-difference extrapolations. In this work, we propose a non-intrusive data-driven predictor that couples reduced-order models of both the solid and fluid subproblems, providing an initial guess for the nonlinear problem of the next time step calculation. Each reduced order model is composed of a nonlinear encoder-regressor-decoder architecture and is equipped with an adaptive update strategy that adds robustness for extrapolation. In doing so, the proposed methodology leverages physics-based insights from high-fidelity solvers, thus establishing a physics-aware machine learning predictor. Using…
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