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Sendhil Nathan B1,2, Veera Siva Reddy B1, Chandrasekhara Sastry C1
1Department of Mechanical Engineering (MED), Indian Institute of Information Technology Design and Manufacturing Kurnool (IIITDM Kurnool), Kurnool, Andhra Pradesh, India.
This study introduces a new Zero-Inflated Gamma Monte Carlo (ZIG MC) framework for accurate spare parts demand forecasting, even with no historical data. ZIG MC significantly improves forecast accuracy and inventory management for intermittent demand under cold-start conditions.
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