Investigation of crowdshipping delivery trip production with real-world data

Hui Shen1, Jane Lin1,2
1Department of Civil, Materials, and Environmental Engineering, University of Illinois at Chicago, IL 60607, USA
2Institute for Environmental Science and Policy, University of Illinois at Chicago, IL 60607, USA

Tài liệu tham khảo

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