EN
Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models
Öz
Statistical process control (SPC) and anomaly detection are critical for enhancing product quality and operational efficiency in industrial manufacturing processes. However, traditional multivariate SPC methods cannot be directly applied to data with constant sum constraints, such as CoDa. In this study, the CoDa data obtained from the casting process were transformed into Euclidean space using the isometric log-ratio (ilr) transformation and monitored using the Hotelling T² control chart. Machine learning and explainability methods were employed to detect and understand the root causes of out-of-control signals. In this context, five classification models were compared: SVM, RF, XGBoost, logistic regression, and KNN. The highest test accuracy rate of 93.88% was achieved using the SVM model. To explain the decision mechanism of the model, SHapley Additive exPlanations (SHAP) and the Mason–Young–Tracy (MYT) generalization approach were jointly applied. The findings reveal that the SHAP and MYT results demonstrate a low level of consistency and that the model provides reliable local and global explainability outputs. By overcoming the limitations of traditional SPC methods, this integrated approach facilitates the understanding of root causes of anomalies in the casting process.
Anahtar Kelimeler
Kaynakça
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Ayrıntılar
Birincil Dil
İngilizce
Konular
İş Süreçleri Yönetimi
Bölüm
Araştırma Makalesi
Yayımlanma Tarihi
31 Aralık 2025
Gönderilme Tarihi
25 Kasım 2025
Kabul Tarihi
16 Aralık 2025
Yayımlandığı Sayı
Yıl 2025 Cilt: 9 Sayı: 2
APA
Orçanlı, K., & Oruç, Ş. (2025). Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models. Acta Infologica, 9(2), 719-744. https://doi.org/10.26650/acin.1830356
AMA
1.Orçanlı K, Oruç Ş. Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models. ACIN. 2025;9(2):719-744. doi:10.26650/acin.1830356
Chicago
Orçanlı, Kenan, ve Şükran Oruç. 2025. “Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models”. Acta Infologica 9 (2): 719-44. https://doi.org/10.26650/acin.1830356.
EndNote
Orçanlı K, Oruç Ş (01 Aralık 2025) Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models. Acta Infologica 9 2 719–744.
IEEE
[1]K. Orçanlı ve Ş. Oruç, “Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models”, ACIN, c. 9, sy 2, ss. 719–744, Ara. 2025, doi: 10.26650/acin.1830356.
ISNAD
Orçanlı, Kenan - Oruç, Şükran. “Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models”. Acta Infologica 9/2 (01 Aralık 2025): 719-744. https://doi.org/10.26650/acin.1830356.
JAMA
1.Orçanlı K, Oruç Ş. Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models. ACIN. 2025;9:719–744.
MLA
Orçanlı, Kenan, ve Şükran Oruç. “Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models”. Acta Infologica, c. 9, sy 2, Aralık 2025, ss. 719-44, doi:10.26650/acin.1830356.
Vancouver
1.Kenan Orçanlı, Şükran Oruç. Detection and Analysis of Out-of-Control Observations in Statistical Process Control Using Explainable Artificial Intelligence Models. ACIN. 01 Aralık 2025;9(2):719-44. doi:10.26650/acin.1830356