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Marc Olivier G. Delchini

Government of the United States of America - Oak Ridge National Laboratory

1 Bethel Valley Road, P.O. Box 2008, Mail Stop 608

Room B-106, Building 5700

Oak Ridge, TN 37831

United States

SCHOLARLY PAPERS

5

DOWNLOADS

299

TOTAL CITATIONS

3

Scholarly Papers (5)

1.

Vertex-Cfd: A Performance-Portable Solver for the Next Generation of High-Fidelity Multi-Physics Simulations

Number of pages: 44 Posted: 01 Oct 2024
Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory and Government of the United States of America - Oak Ridge National Laboratory
Downloads 113 (626,371)

Abstract:

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artificial compressible method, incompressible laminar flow, temperature equation, finite element method, verification and validation

2.

Validation of a Nek5000-based magnetohydrodynamics solver for fusion-blanket-relevant conditions

Number of pages: 42 Posted: 14 May 2026
Filipe Brandao, Arpan Sircar, Marc Olivier G. Delchini and Vittorio Badalassi
Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory and Government of the United States of America - Oak Ridge National Laboratory
Downloads 53 (1,318,317)

Abstract:

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magnetohydrodynamics (MHD), Nek5000, Fusion energy

3.

Computational Fluid Dynamics Investigations of Flow, Heat Transfer, and Oxidation in Heat Recovery Steam Generator

Number of pages: 29 Posted: 15 Jun 2022
Nithin S. Panicker, Marc Olivier G. Delchini, Tom Sambor and Adrian S. Sabau
Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Electric Power Research Institute and Government of the United States of America - Oak Ridge National Laboratory
Downloads 49 (1,074,648)
Citation 3

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Oxidation, Computational Fluid Dynamics, Heat Exchangers, Heat Recovery Steam Generators, Conjugate Heat Transfer

4.

A Full-Induction Magnetohydrodynamics Solver for Liquid Metal Fusion Blankets in Vertex-CFD

Number of pages: 39 Posted: 12 Nov 2025
Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory and Government of the United States of America - Oak Ridge National Laboratory
Downloads 45 (1,209,354)

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Full-induction magnetohydrodynamics, Liquid metal fusion blankets, Finite element method (FEM), Implicit Runge-Kutta, High-performance computing (HPC), Open-source computational framework

5.

Co-Optimization of Fuel Properties, Combustion System Geometry, and Injection Strategy for Conventional Diesel Fuel

Number of pages: 31 Posted: 14 Jun 2024
Government of the United States of America - Oak Ridge National Laboratory, Government of the United States of America - Oak Ridge National Laboratory, affiliation not provided to SSRN, affiliation not provided to SSRN and Cummins Inc
Downloads 39 (1,196,171)

Abstract:

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co-optimization, High efficiency, Combustion, Fuel properties, machine learning