We consider an optimal flow control problem in a patient-specific coronary artery bypass graft with the aim of matching the blood flow velocity with given measurements as the Reynolds number varies in a physiological range. Blood flow is modelled with the steady incompressible Navier-Stokes equations. The geometry consists in a stenosed left anterior descending artery where a single bypass is performed with the right internal thoracic artery. The control variable is the unknown value of the normal stress at the outlet boundary, which is need for a correct set-up of the outlet boundary condition. For the numerical solution of the parametric optimal flow control problem, we develop a data-driven reduced order method that combines proper orthogonal decomposition (POD) with neural networks. We present numerical results showing that our data-driven approach leads to a substantial speed-up with respect to a more classical POD-Galerkin strategy proposed in [62], while having comparable accuracy.

Balzotti, C., Siena, P., Girfoglio, M., Quaini, A., Rozza, G. (2022). A DATA-DRIVEN REDUCED ORDER METHOD FOR PARAMETRIC OPTIMAL BLOOD FLOW CONTROL: APPLICATION TO CORONARY BYPASS GRAFT. COMMUNICATIONS IN OPTIMIZATION THEORY, 2022 [10.23952/cot.2022.26].

A DATA-DRIVEN REDUCED ORDER METHOD FOR PARAMETRIC OPTIMAL BLOOD FLOW CONTROL: APPLICATION TO CORONARY BYPASS GRAFT

Girfoglio M.;
2022-01-01

Abstract

We consider an optimal flow control problem in a patient-specific coronary artery bypass graft with the aim of matching the blood flow velocity with given measurements as the Reynolds number varies in a physiological range. Blood flow is modelled with the steady incompressible Navier-Stokes equations. The geometry consists in a stenosed left anterior descending artery where a single bypass is performed with the right internal thoracic artery. The control variable is the unknown value of the normal stress at the outlet boundary, which is need for a correct set-up of the outlet boundary condition. For the numerical solution of the parametric optimal flow control problem, we develop a data-driven reduced order method that combines proper orthogonal decomposition (POD) with neural networks. We present numerical results showing that our data-driven approach leads to a substantial speed-up with respect to a more classical POD-Galerkin strategy proposed in [62], while having comparable accuracy.
2022
Balzotti, C., Siena, P., Girfoglio, M., Quaini, A., Rozza, G. (2022). A DATA-DRIVEN REDUCED ORDER METHOD FOR PARAMETRIC OPTIMAL BLOOD FLOW CONTROL: APPLICATION TO CORONARY BYPASS GRAFT. COMMUNICATIONS IN OPTIMIZATION THEORY, 2022 [10.23952/cot.2022.26].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/692860
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