Gothic - Hybrid system level and coarse grid CFD modelling and simulation

Jeff Lane for "Past-students and Expert Webinars in Nuclear Engineering"

data 24 Giugno 2022 15:00  |  luogo Online L'evento si tiene in rete, consulta la pagina dell'evento
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lanelargoIl 24 giugno alle ore 15, Jeff Lane (Zachry Nuclear Engineering, USA), tiene il seminario "Gothic - Hybrid system level and coarse grid CFD modelling and simulation".

L'incontro fa parte del ciclo "Past-students and Expert Webinars in Nuclear Engineering".
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Dr. Jeff Lane’s background is in software development, computational thermal-hydraulics and reactor safety analysis for both existing LWRs as well as next generation SMR and non-LWR concepts. Currently he is the technical lead and program manager for the GOTHIC coarse-grid CFD software. His expertise is in multi-physics and multi-scale methods, Verification, Validation, and Uncertainty Quantification (VV&UQ), software quality assurance (SQA), Evaluation Model Development and Assessment Process (EMDAP), and Best-Estimate Plus Uncertainty (BEPU) methods. Dr. Lane has also been involved with development of digital twins, the application of machine learning to guide simulations, accident management and data-driven modeling. Prior to joining Zachry Nuclear, Dr. Lane worked for the Bettis Atomic Power Laboratory, where he was responsible for advancing simulation capabilities and multi-physics methods to support existing and future applications. Dr. Lane received his Ph.D. from Pennsylvania State University where he studied under the Rickover Fellowship Program in Nuclear Engineering. 

 

Info e Contatti:
walter.ambrosini@unipi.it http://nucleare.ing.unipi.it/it/webinars-2021-2022

Allegati:

2022-06-24 15:00:00
2022-06-24 17:00:00

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