Volume 37, Issue 2 (IJIEPR- In Progress 2026)                   IJIEPR 2026, 37(2): 34-42 | Back to browse issues page


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Njah M, Ridha H, Zaag M. Explainable AI-Based Automation of Dye Recipe Formulation in the Textile Industry. IJIEPR 2026; 37 (2) :34-42
URL: http://ijiepr.iust.ac.ir/article-1-2020-en.html
1- Full professor, Laboratory of Advanced Technologies for Medicine and Signals, National Engineering School of Sfax, University of Sfax & Digital Research Center of Sfax, Technopole of Sfax, Tunisia. M.
2- Advanced Technologies in Medicine and Signals (ATMS),National Engineering de Sfax (ENIS), University of Sfax, Tunisia,
3- Engineer, Industrial textiles company (SITEX), Ksar Hellal, Tunisia , zaag.mounir@sitex.com.tn
Abstract:   (1262 Views)

This paper proposes an explainable artificial intelligence (XAI)–based framework for automating dye recipe formulation in industrial textile manufacturing, with a focus on yarn rope dyeing for denim production. A deep learning multi-output regression model is developed to predict the resulting yarn shade components (L_cable, a_cable, b_cable)  from heterogeneous industrial inputs, including customer-defined fabric shade targets, cotton fiber characteristics, and washing recipe parameters. To ensure transparency and industrial interpretability, Shapley Additive Explanations (SHAP) are integrated to provide global and output-specific explanations of the model’s predictions. The analysis reveals the dominant influence of cotton fiber properties, such as tenacity, micronaire, and fiber uniformity, alongside key controllable process parameters, including neutralization time, cellulose treatment duration, and detergent temperature. The proposed framework enables a clear distinction between raw-material-driven variability and process-adjustable levers, transforming the predictive model into an interpretable decision-support tool. The approach is validated using real industrial data from a Tunisian denim manufacturer and is readily transferable to similar textile dyeing and finishing processes.

Full-Text [PDF 731 kb]   (115 Downloads)    
Type of Study: Research | Subject: Decision Analysis and Methods
Received: 2024/04/16 | Accepted: 2026/01/7 | Published: 2026/06/20

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