February 5, 2025
Journal Article

Neural Lumped Parameter Differential Equations with Application in Friction-Stir Processing

Abstract

Lumped parameter methods aim to simplify the evolution of spatially-extended or continuous physical systems to that of a ``lumped'' element representative of the physical scales of the modeled system. For systems where the definition of a lumped element or its associated physics may be unknown, modeling tasks may be restricted to full-fidelity simulations of the physics of a system. In this work, we consider data-driven modeling tasks with limited point-wise measurements of otherwise continuous systems. We build upon the notion of the Universal Differential Equation (UDE) to construct data-driven models for reducing dynamics to that of a lumped parameter and inferring its properties. The flexibility of UDEs allow for composing various known physical priors suitable for application-specific modeling tasks, including lumped parameter methods. The motivating example for this work is the plunge sequence for friction-stir welding; specifically, (i) mapping power input into the tool to a point-measurement of temperature and (ii) using this learned mapping for process control.

Published: February 5, 2025

Citation

Koch J.V., W. Choi, E. King, D. Garcia, H. Das, T. Wang, and K.A. Ross, et al. 2025. Neural Lumped Parameter Differential Equations with Application in Friction-Stir Processing. Journal of Intelligent Manufacturing 36, no. 2:1111–1121. PNNL-SA-184214. doi:10.1007/s10845-023-02271-5