Machine Learning Applications for Delivery Time Prediction and Freight Planning
- 作者: Hung N.V1, Thu Huong T.1, Tan N.1, Doan T.C2, Nam-Hoang N.1
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隶属关系:
- East Asia University of Technology
- Vietnam National University Hanoi
- 期: 卷 24, 编号 5 (2025)
- 页面: 1379-1407
- 栏目: Robotics, automation and control systems
- URL: https://journals.rcsi.science/2713-3192/article/view/350761
- DOI: https://doi.org/10.15622/ia.24.5.5
- ID: 350761
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作者简介
N. Hung
East Asia University of Technology
Email: hungnv@eaut.edu.vn
Ky Anh -
T. Thu Huong
East Asia University of Technology
Email: huongtt2@eaut.edu.vn
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N. Tan
East Asia University of Technology
Email: tan25102000@gmail.com
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T. Doan
Vietnam National University Hanoi
Email: tcdoan@vnu.edu.vn
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N. Nam-Hoang
East Asia University of Technology
Email: hoangnguyen@eaut.edu.vn
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