First Contact: Data-driven Friction-Stir Process Control
James Koch
Ethan King
WoongJo Choi
Megan Ebers
David Garcia
Ken Ross
Keerti Kappagantula
Main:8 Pages
9 Figures
Bibliography:2 Pages
1 Tables
Abstract
This study validates the use of Neural Lumped Parameter Differential Equations for open-loop setpoint control of the plunge sequence in Friction Stir Processing (FSP). The approach integrates a data-driven framework with classical heat transfer techniques to predict tool temperatures, informing control strategies. By utilizing a trained Neural Lumped Parameter Differential Equation model, we translate theoretical predictions into practical set-point control, facilitating rapid attainment of desired tool temperatures and ensuring consistent thermomechanical states during FSP. This study covers the design, implementation, and experimental validation of our control approach, establishing a foundation for efficient, adaptive FSP operations.
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