Anindya Annisa Agung
Institut Teknologi Sumatera

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Adaptive Zone-Based Inventory Framework using Self-Supervised Learning for Cost-Efficient Restocking in the Food and Beverage Industry Anindya Annisa Agung; Juniwati Juniwati; Intan Mardiono; Yu-Chieh Wang
Jurnal Teknik Industri: Jurnal Keilmuan dan Aplikasi Teknik Industri Vol. 27 No. 2 (2025): December 2025
Publisher : Institute of Research and Community Outreach - Petra Christian University

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.9744/jti.27.2.225-236

Abstract

The food and beverage service industry operates under high demand volatility, requiring inventory systems that are both adaptive and cost-efficient. A central challenge is maintaining product availability without excessive inventory that inflates costs. The objective of this study is to develop a data-driven restocking framework that improves cost efficiency while accounting for real operational constraints. The proposed method integrates K-Means clustering with a decision tree to generate interpretable, rule-based stock recommendations. K-Means clustering was applied as an unsupervised approach to group items into risk-based zones (Green, Yellow, Red), which were then used as labels in a supervised Decision Tree model. The model achieved 99% accuracy and an F1-score of 0.93. When applied to real industry data, it reduced Total Inventory Cost (TIC) by up to 16.9% compared with the company's MOQ-based policy while preserving stable service performance. These findings demonstrate that combining clustering and rule-based machine learning provides a practical, cost-efficient, and interpretable solution for optimizing restocking decisions in complex operational environments.