TY - GEN
T1 - Time Series Classification in High-Pressure Die Casting Manufacturing using Dynamic Time Warping
AU - Schmalzer, Sebastian
AU - Holom, Roxana
AU - Michno, Tomasz
AU - Falkner, Dominik
AU - Repanšek, Urban
AU - Košir, Nejc
AU - Šifrer, Peter
N1 - Conference code: 7
PY - 2026/1/1
Y1 - 2026/1/1
N2 - This paper presents a comprehensive approach to time series classification in high-pressure die casting (HPDC) manufacturing using Dynamic Time Warping (DTW) algorithms for automated quality prediction and process optimisation. As part of the metaFacturing European project, we developed machine learning (ML) models that analyse velocity and pressure profiles from HPDC machines to predict casting quality and identify critical process parameters influencing defect formation. We evaluated three classification models—Support Vector Machine (SVM), Linear SVM, and Gradient Boosting Classifier (GBC)—with GBC demonstrating superior performance (weighted F1 scores reaching up to 92%). The methodology incorporates expert feedback and explainable AI techniques to provide actionable insights for process engineers. Although the analysis across different products revealed performance variations, indicating the product-specific nature of velocity and pressure signature patterns, the results still demonstrated the applicability of DTW-based feature extraction combined with classifier models. The approach enables real-time data-driven quality assessment and yields deeper insights supporting process parameter optimisation in industrial manufacturing environments.
AB - This paper presents a comprehensive approach to time series classification in high-pressure die casting (HPDC) manufacturing using Dynamic Time Warping (DTW) algorithms for automated quality prediction and process optimisation. As part of the metaFacturing European project, we developed machine learning (ML) models that analyse velocity and pressure profiles from HPDC machines to predict casting quality and identify critical process parameters influencing defect formation. We evaluated three classification models—Support Vector Machine (SVM), Linear SVM, and Gradient Boosting Classifier (GBC)—with GBC demonstrating superior performance (weighted F1 scores reaching up to 92%). The methodology incorporates expert feedback and explainable AI techniques to provide actionable insights for process engineers. Although the analysis across different products revealed performance variations, indicating the product-specific nature of velocity and pressure signature patterns, the results still demonstrated the applicability of DTW-based feature extraction combined with classifier models. The approach enables real-time data-driven quality assessment and yields deeper insights supporting process parameter optimisation in industrial manufacturing environments.
KW - Time series classification
KW - High-pressure die casting
KW - Dynamic time warping
KW - Machine learning
KW - Process optimisation
KW - Quality control
KW - Explainable AI
UR - https://publications.ait.ac.at/en/publications/756cbb06-68bd-4e63-82d0-58e126a11b4d
U2 - 10.1016/j.procs.2026.02.201
DO - 10.1016/j.procs.2026.02.201
M3 - Conference Proceedings with Oral Presentation
SN - 1877-0509
VL - 277
T3 - Procedia Computer Science
SP - 1631
EP - 1640
BT - 7th International Conference on Industry of the Future and Smart Manufacturing (former International Conference on Industry 4.0 and Smart Manufacturing)
T2 - International Conference on Industry of the Future and Smart Manufacturing (ISM)
Y2 - 12 November 2025 through 14 November 2025
ER -