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Machine learning for demand forecasting in the physical internet: a case study of agricultural products in Thailand

Author

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  • Anirut Kantasa-ard
  • Maroua Nouiri
  • Abdelghani Bekrar
  • Abdessamad Ait el cadi
  • Yves Sallez

Abstract

Supply chains are complex, stochastic systems. Nowadays, logistics managers face two main problems: increasingly diverse and variable customer demand that is difficult to predict. Classical forecasting methods implemented in many business units have limitations with the fluctuating demand and the complexity of fully connected supply chains. Machine Learning methods have been proposed to improve prediction. In this paper, a Long Short-Term Memory (LSTM) is proposed for demand forecasting in a physical internet supply chain network. A hybrid genetic algorithm and scatter search are proposed to automate tuning of the LSTM hyperparameters. To assess the performance of the proposed method, a real-case study on agricultural products in a supply chain in Thailand was considered. Accuracy and coefficient of determination were the key performance indicators used to compare the performance of the proposed method with other supervised learnings: ARIMAX, Support Vector Regression, and Multiple Linear Regression. The results prove the better forecasting efficiency of the LSTM method with continuous fluctuating demand, whereas the others offer greater performance with less varied demand. The performance of hybrid metaheuristics is higher than with trial-and-error. Finally, the results of forecasting model are effective in transportation and holding costs in the distribution process of the Physical Internet.

Suggested Citation

  • Anirut Kantasa-ard & Maroua Nouiri & Abdelghani Bekrar & Abdessamad Ait el cadi & Yves Sallez, 2021. "Machine learning for demand forecasting in the physical internet: a case study of agricultural products in Thailand," International Journal of Production Research, Taylor & Francis Journals, vol. 59(24), pages 7491-7515, December.
  • Handle: RePEc:taf:tprsxx:v:59:y:2021:i:24:p:7491-7515
    DOI: 10.1080/00207543.2020.1844332
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    Citations

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    Cited by:

    1. Anna Borucka, 2023. "Seasonal Methods of Demand Forecasting in the Supply Chain as Support for the Company’s Sustainable Growth," Sustainability, MDPI, vol. 15(9), pages 1-21, April.
    2. Suriyan Jomthanachai & Wai Peng Wong & Khai Wah Khaw, 2024. "An Application of Machine Learning to Logistics Performance Prediction: An Economics Attribute-Based of Collective Instance," Computational Economics, Springer;Society for Computational Economics, vol. 63(2), pages 741-792, February.
    3. Qingyan Zhou & Hao Li & Youhua Zhang & Junhong Zheng, 2023. "Product Evaluation Prediction Model Based on Multi-Level Deep Feature Fusion," Future Internet, MDPI, vol. 15(1), pages 1-16, January.
    4. Fábio Polola Mamede & Roberto Fray da Silva & Irineu de Brito Junior & Hugo Tsugunobu Yoshida Yoshizaki & Celso Mitsuo Hino & Carlos Eduardo Cugnasca, 2023. "Deep Learning and Statistical Models for Forecasting Transportation Demand: A Case Study of Multiple Distribution Centers," Logistics, MDPI, vol. 7(4), pages 1-19, November.
    5. Arnab Mitra & Arnav Jain & Avinash Kishore & Pravin Kumar, 2022. "A Comparative Study of Demand Forecasting Models for a Multi-Channel Retail Company: A Novel Hybrid Machine Learning Approach," SN Operations Research Forum, Springer, vol. 3(4), pages 1-22, December.

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