Improved Training Strategies for Physics-Informed Neural Networks using Real Experimental Data in Aluminum Spot Welding
Jan A. Zak, Christian Wei{\ss}enfels

TL;DR
This paper develops and tests new training strategies for physics-informed neural networks to accurately predict internal states in aluminum spot welding using real experimental data, aiming for non-invasive quality control.
Contribution
It introduces two novel training strategies, including progressive loss integration and conditional parameter updates, to effectively incorporate real-world data into physics-informed neural networks.
Findings
Predicts dynamic displacement and nugget diameter within experimental confidence intervals.
Enables transfer of welding stage models from steel to aluminum.
Supports fast, model-based quality control in industrial welding applications.
Abstract
Resistance spot welding is the dominant joining process for the body-in-white in the automotive industry, where the weld nugget diameter is the key quality metric. Its measurement requires destructive testing, limiting the potential for efficient quality control. Physics-informed neural networks were investigated as a promising tool to reconstruct internal process states from experimental data, enabling model-based and non-invasive quality assessment in aluminum spot welding. A major challenge is the integration of real-world data into the network due to competing optimization objectives. To address this, we introduce two novel training strategies. First, experimental losses for dynamic displacement and nugget diameter are progressively included using a fading-in function to prevent excessive optimization conflicts. We also implement a custom learning rate scheduler and early stopping…
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