Dynamic supplier selection and lot-sizing problem considering carbon emissions in a big data environment

Elsevier BV - Tập 144 - Trang 573-584 - 2019
Kuldeep Lamba1, Surya Prakash Singh1
1Department of Management Studies, Indian Institute of Technology, Delhi, India

Tài liệu tham khảo

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