Author
Listed:
- Ilya Jackson
- Jafar Namdar
- Maria Jesús Saénz
- Richard Augustus Elmquist III
- Luis Rodrigo Dávila Novoa
Abstract
This research investigates how Artificial Intelligence (AI) and Machine Learning (ML) forecasting methodologies can be leveraged for cold chain capacity planning, specifically utilising Prophet and Seasonal Autoregressive Integrated Moving Average parametrised through grid search. In collaboration with Americold, the world's second-largest refrigerated logistic service provider, the study explores the challenges and opportunities in applying AI/ML techniques to complex operations covering 385 customers and a capacity of 73,296 pallet positions. We train and test several AI/ML and traditional statistical models using extensive data for every customer over 3.5 years. Based on the results, MAPE of 5.28% was achieved on the whole site level, and SARIMA outperformed ML models in most cases. Next, we show that developing and applying a Customer Segmentation Matrix has enabled more accurate forecasting and planning across various customer segments, addressing the issue of forecasting inaccuracies. This approach effectively improves forecasting inaccuracies, underscoring the significance of tailoring AI/ML models for demand forecasting within the cold-chain industry. Ultimately, this research presents an AI-driven approach that transcends mere forecasting, offering a practical pathway to manage capacity in light of the constraints.
Suggested Citation
Ilya Jackson & Jafar Namdar & Maria Jesús Saénz & Richard Augustus Elmquist III & Luis Rodrigo Dávila Novoa, 2025.
"Revolutionize cold chain: an AI/ML driven approach to overcome capacity shortages,"
International Journal of Production Research, Taylor & Francis Journals, vol. 63(6), pages 2190-2212, March.
Handle:
RePEc:taf:tprsxx:v:63:y:2025:i:6:p:2190-2212
DOI: 10.1080/00207543.2024.2398583
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