This study investigates the integration of ABC/XYZ (value-based classification/ demand variability classification) inventory classification with demand forecasting models (ETS - Error, Trend, Seasonality, ARIMA - AutoRegressive Integrated Moving Average, Prophet - type of additive model) in a manufacturing enterprise to support sustainable resource management. The research aims to evaluate the inventory structure, demand variability, and forecasting accuracy across different material categories. The results confirm a strong concentration of inventory value in A-class items and significant differences in forecast accuracy across ABC/XYZ segments. While AX items generally exhibit lower forecast errors, notable exceptions highlight the need for additional diagnostic analysis. The findings demonstrate that integrating classification and forecasting improves inventory decision-making, reduces excess stock, and supports sustainable resource utilization. The proposed approach provides practical guidance for optimizing inventory management in industrial environments.
Niekurzak et al. (Sun,) studied this question.
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