Articles | Open Access |

MODERN APPROACHES TO RAW MATERIAL INVENTORY MANAGEMENT IN GLOBAL SUPPLY CHAINS

Xamroyev Shaxzod Normurod ugli , Master’s student of Asia international university

Abstract

This article examines modern theoretical and practical approaches to raw material inventory management in the context of digital transformation, resilient supply chains, and sustainable industrial development. The research focuses on recent methodological changes in inventory formation, planning, and distribution systems between 2021 and 2026. Special attention is given to Demand-Driven Material Requirements Planning (DDMRP), AI-driven forecasting, digital twins, and resilient sourcing models. The article also analyzes current industrial and logistics trends in Uzbekistan and evaluates opportunities for implementing smart inventory systems in manufacturing enterprises. The findings indicate that data-driven inventory management and digital integration significantly improve operational efficiency, reduce costs, and increase supply chain resilience.

Keywords

Inventory management, raw materials, supply chain resilience, DDMRP, digital twins, AI-driven planning, logistics,

References

Christopher M. Logistics and Supply Chain Management. Pearson Education, 2022.

Deloitte. Global Supply Chain Survey Report, 2024.

McKinsey & Company. AI in Supply Chain Management Report, 2023.

World Bank. Logistics Performance Index, 2024.

OECD. Supply Chain Resilience Review, 2023.

Statistics Agency of the Republic of Uzbekistan. Industrial Statistics Report, 2024.

Ivanov D. Digital Supply Chain and Industry 4.0. Springer, 2021.

APICS. DDMRP Official Guidelines, 2022.

Chopra S., Meindl P. Supply Chain Management: Strategy, Planning and Operation. Pearson, 2023.

Ministry of Investments, Industry and Trade of Uzbekistan. Annual Industrial Development Report, 2024.

Article Statistics

Downloads

Download data is not yet available.

Copyright License

Download Citations

How to Cite

MODERN APPROACHES TO RAW MATERIAL INVENTORY MANAGEMENT IN GLOBAL SUPPLY CHAINS. (2026). International Journal of Artificial Intelligence, 6(5), 1255-1259. https://www.academicpublishers.org/journals/index.php/ijai/article/view/13413